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Working Paper:Understanding Rural Teacher Retention and
the Role of Community AmenitiesLuke C. Miller*
* University of Virginia405 Emmet Street, P.O. Box 400277
Charlottesville, VA 22904lcm7t@virginia.edu
Updated 6 September 2012.
Center on Education Policy and Workforce Competitiveness
University of Virginia PO Box 400879
Charlottesville, VA 22904
CEPWC working papers are available for comment and discussion only. They have not been peer-reviewed. Do not cite or quote without author permission.
I am tremendously grateful to the research team of Don Boyd, Hamilton Lankford, Susanna Loeb, and James
Wyckoff for providing me with access to the New York teacher data. Daphna Bassok, Robert Costrell, Pam Grossman, Eric Hanushek, Susanna Loeb, and Sean Reardon provided useful feedback on earlier versions of
this analysis as did seminar participants at the American Education Finance Association annual conference, Abt Associates, SRI International, and the Urban Institute. All errors are attributable to the author.
CEPWC Working Paper Series No. 1. October 2012.Available at http://curry.virginia.edu/research/centers/cepwc/publications.
Curry School of Education | Frank Batten School of Leadership and Public Policy | University of Virginia
Two oft-cited assertions about rural teacher labor markets are examined in this study: first, rural schools have a harder time retaining teachers than non-rural schools and, second, their efforts to retain teachers are complicated by relatively poor community amenities. Administrative data on first-time teachers in New York State between 1994 and 2002 are combined with data from a large number other sources capturing community amenities such as geographic isola-tion, access to medical services, access to family networks, availability of shopping, and socio-economic health. The results support both claims and highlight important heterogeneity among rural communities.
Center on Education Policy and Workforce Competitiveness
Miller – Rural Teacher Retention
1 CEPWC Working Paper Series No. 1. October 2012.
Available at http://curry.virginia.edu/research/centers/cepwc/publications. Curry School of Education | Frank Batten School of Leadership and Public Policy | University of Virginia
UNDERSTANDING RURAL TEACHER RETENTION AND THE ROLE OF COMMUNITY AMENITIES By Luke C. Miller, University of Virginia
1. Introduction
In surveys of rural administrators and teachers, relatively poor community amenities are
often cited as significant barriers to attracting and retaining highly skilled teachers (e.g.,
Schwartzbeck et al., 2003; NASBE, 2004; Hammer et al., 2005). Given the current policy
environment’s dual emphasis on teacher quality and student performance, it is imperative for
policymakers and rural administrators to reevaluate and strengthen teacher retention policies. A
recent overview of rural education in America found gaps in key student achievement outcomes
between rural and suburban students (Provasnik et al., 2007). Fewer rural students met the 2005 4th
and 8th grade NAEP proficiency standards in reading and mathematics than suburban students.
Rural students are also less likely to graduate (75 versus 79 percent) and to enroll in college (27
versus 37 percent) than non-rural students. The prevailing logic, prominently embodied in No Child
Left Behind, holds that improving teacher quality will help close these student achievement gaps.
This paper provides useful information to policy makers who seek to direct resources
intended to improve teacher retention to the neediest rural schools and communities. A host of
policies at the federal and state levels acknowledge the connection between quality teachers and
student performance. Generally, these policies provide financial incentives for teachers to accept
positions in specific hard-to-staff schools (e.g., high poverty or low performing) or in critical-
shortage subjects (e.g., mathematics, science, and special education). The federal government
operates Perkins and Stafford student loan forgiveness programs for teachers in eligible positions.
The financial incentives at the state level are most frequently education loan forgiveness or salary
bonuses; however some provide housing or tuition assistance. A review of state teacher policies
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found that almost every state has some form of teacher retention incentive policy on the books
(Loeb & Miller, 2006). In eleven states, these policies target rural schools specifically.
Framed by hedonic wage theory and building on exploratory studies suggesting community
characteristics play a role in teacher career paths, I ask: how are characteristics of rural schools and
communities related to the transfer and quit decisions of rural teachers, on average, and how do these relationships vary
systematically across teachers of different subjects? Communities are characterized by the amenities they
offer, including access to other communities and professional networks, shopping, family networks,
housing, and other employment opportunities. I take New York as a case study. Although not
viewed as a rural state, a significant portion of America’s rural students are educated within its
borders. More than half of all rural students in this country attend school in just 12 States which are
among the most populous and urban in the nation (Johnson & Strange, 2007). New York has the
country’s eighth largest rural student population. Therefore, if we were to ignore rural education in
non-rural states like New York, we would be ignoring the context in which many rural students are
educated.
Rural schools are not a homogeneous group, and the teacher retention challenges they face
are varied. Using data collected from more than two dozen sources, my results highlight observable
and measurable characteristics of rural schools and communities that predict lower retention rates.
Of particular interest, the results demonstrate the influence of richer community amenities in teacher
retention, even after accounting for differences in salary, non-wage job attributes, and opportunity
costs.
This paper is laid out in five sections. I briefly review the teacher retention literature to
highlight key predictive factors to be included in my analysis. The second section describes the data
collected. Here I detail how I differentiate between rural and non-rural schools and how I map
amenities onto school communities. In the third section, I summarize the hedonic wage theory of
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job selection which guides my analytic strategy. I present my results in the fourth section and discuss
policy implications in the final section.
2. Factors Predicting Teacher Retention
There is a rather large and growing body of research dedicated to exploring factors that
predict teacher retention. Retention is not consistently defined across these studies. Some examine
the predictive factors of retaining teachers within specific schools (e.g., Boyd et al., 2005b; Hanushek
et al., 2004; Ingersoll, 2002; Murnane, 1981; Scafidi et al., 2007) and others focus on retention within
specific districts (e.g., Baugh & Stone, 1982; Gritz & Theobald, 1996; Imazeki, 2005; Mont & Rees,
1996; Murnane, 1981; Murnane, 1984; Ondrich et al., 2008; Theobald, 1990). Still others consider
retention as remaining within a specific state’s teacher labor force (e.g., Feng, 2005; Grissmer &
Kirby, 1992; Murnane & Olsen, 1989 and 1990; Murnane et al., 1988) or within a nation’s teacher
labor force (e.g., Dolton & van der Klaauw, 1999; Stinebrickner, 1998, 1999, 2001, and 2002).
Collectively, they demonstrate the power of wage, opportunity costs, non-wage attributes,
and teacher characteristics in predicting teacher retention. Teachers are more likely to remain
teaching when they earn higher salaries (Grissmer & Kirby, 1992; Murnane & Olsen, 1989 & 1990)
and are more likely to transfer as salaries in other districts increase relative to their own (Baugh &
Stone, 1982; Imazeki, 2005; Ondrich et al., 2008). Expectations of higher future wages in teaching
also predict higher retention (Imazeki, 2005; Stinebrickner, 2001). Teachers are more likely to leave
teaching if they face higher opportunity costs (i.e., higher wages in non-teaching positions) (Dolton
& van der Klaauw, 1999; Murnane & Olsen, 1989 & 1990; Ondrich et al., 2008).
These studies demonstrate that the neediest schools have particularly acute problems with
teacher retention. Teachers are more likely to leave schools with low student achievement, high
percentages of minority students, high poverty levels, and greater student discipline problems (Boyd
et al., 2005b; Feng, 2005; Hanushek et al., 2004; Scafidi et al., 2007).
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Specific characteristics of teachers, such as the subject they teach and their educational
background also predict retention rates. Teachers of specific subjects such as mathematics, science,
and special education have been found to have lower retention levels (Grissmer & Kirby, 1992;
Murnane et al., 1988). Additionally, Mont & Rees (1996) find that teaching outside of certified
subject area increases the probability of the teacher leaving. Higher ability teachers are more likely to
transfer and quit teaching (Boyd et al., 2005b; Stinebrickner, 2001).
Prior studies highlight key factors to include in any analysis of teacher retention; however,
they provide only minimal insight on how the teacher retention picture in rural schools may differ
from that in non-rural schools. In some, the sole focus is non-rural teachers (e.g., Boyd et al., 2005b;
Murnane, 1981 and 1984; Ondrich et al., 2008). Average retention differences between rural and
non-rural teachers, where measured at all, enter these analyses as a single covariate with mixed
results. Baugh & Stone (1982) include a dummy variable to indicate if the teacher’s district is located
within a metropolitan statistical area (MSA) and find teachers in an MSA (i.e., non-rural teachers) are
more likely than teachers outside an MSA (i.e., rural teachers) to change occupations in 1977-78, but
found no difference in the 1974-75 sample. Gritz & Theobald (1990) find that teachers were less
likely to remain in schools located more than 30 miles from an urban area (i.e., rural teachers) than
teachers located within 30 miles (i.e., non-rural teachers); however, this relationship was significant
for female teachers only. Imazeki’s (2005) analysis of Wisconsin teachers found rural teachers were
no more or less likely to remain in their current district than teachers in other non-rural districts.
Mont & Rees (1996) find that teachers in New York districts with a lower percentage of students
living in an urban area (i.e., more rural districts) are more likely to leave their district; however, the
relationship is not significant. In their study of Missouri teacher retention, Podgursky et al. (2004)
include an indicator of whether or not the school was located in a rural community but do not
present the coefficients in the paper.
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The literature focusing specifically on rural teacher retention is both smaller in number and
much less rigorous in the analytic techniques employed. Whereas almost all the studies described
above use multivariate techniques to model teacher retention as a function of wage, non-wage
attributes, opportunity costs, and teacher characteristics, the rural-focused studies rely on descriptive
statistics of survey data from administrators and teachers to highlight potential causes of low teacher
retention in rural schools.
One common theme evident in this literature and absent from the general teacher retention
literature discussed above is the role of community amenities in aiding/hindering teacher retention.
Rural communities are often lauded for the benefits of a rural lifestyle they offer such as a healthier,
quieter, safer lifestyle; a good place to raise children; a small, caring community; and an abundance
of clear, open spaces (Boylan et al., 1993). However, those benefits of the rural lifestyle come with
some substantial disadvantages which are theorized to pose barriers to retaining teachers in rural
classrooms. Isolation, be it geographical, social, or professional, frequently is mentioned as one such
disadvantage of the rural lifestyle (Boylan & McSwan, 1998; Boylan et al., 1993; Hammer et al., 2005;
Massey & Crosby, 1983; Murphy & Angleski, 1996/1997; Schwartzbeck et al., 2003). As jobs in the
traditional rural industries of farming, mining, and lumbering continue to disappear and the creation
of high-paying service or technical jobs in rural areas lags, rural labor markets in general have
become more disadvantaged. Consequently, couples are facing increasing difficulties securing stable,
satisfactory employment in rural communities (Boylan et al., 1993; Green, 2005; Schwartzbeck et al.,
2003). Rural communities also tend to provide their residents with fewer shopping venues (Murphy
& Angleski, 1996/1997), fewer cultural activities (Boylan et al., 1993), weaker access to health
services (Boylan, et. al, 1993; Kleinfield & McDiarmid, 1986), and a lack of adequate housing
(Schwartzbeck et al., 2003). However, retention rates are believed to be higher when teachers have a
stronger sense of connectedness to the community resulting from either having a strong family
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network within the community or having been made to feel welcome and a part of the community
by other community members (Bornfeld et al., 1997; Boylan & McSwan, 1998; McClure & Reeves,
2004; Murphy & Angleski, 1996/1997; Storey, 1993).
The present study marks the first time these two bodies of literature have been combined. It
models rural teacher retention decisions as a function of wages, non-wage attributes, opportunity
costs, teacher characteristics, and community amenities. My analysis is framed by the hedonic wage
theory of job selection.
3. Data and Methodology
I examine the effect of community amenities on the career paths of teachers in rural teacher
labor markets using data from New York State. My analysis focuses on full-time teachers who began
their careers in public schools outside New York City and Long Island between the 1993-1994 and
2001-2002 school years (1994 to 2002)—a 9-year period. This yields a sample of 22,698 teachers,
10,024 (45 percent) of which began their careers in rural schools (Table 1).
(Insert Table 1 about here)
These teachers are a subsample of teachers observed in administrative data compiled
annually by the New York State Department of Education on all teachers in all public New York
State schools. The data allows for individual teachers to be followed from year to year. The data
includes information on teacher characteristics, their wages, and the non-wage attributes of their
schools. Teacher characteristics include gender, age, ethnicity and race, competitiveness of the
undergraduate institution attended, educational attainment, performance on teacher certification
exams, teacher certification status, and subject(s) taught. All salaries were converted to 2004 real
dollars. Non-wage attributes include school level (elementary, middle, or high school), enrollment,
student-teacher ratios, and aggregate student body characteristics (percent minority, eligible for free
or reduced-price lunch, and limited English proficient).
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I calculate five measures of the opportunity costs of being a teacher. The first is the number
of schools within 20 miles is intended to be a proxy for the costs of transferring jobs (i.e., teachers
are less likely to incur the costs of changing residences when transferring to nearby schools).
Opportunity costs rise with the number of nearby schools. Following the approach taken by Imazeki
(2005), I calculate three within-region measures of relative teacher salaries. New York State
Department of Education groups New York’s 62 counties into 13 regions.1 The relative wage ratio
measures a teacher’s salary as a percentage of the regional average teacher salary.2 Higher values
indicate a teacher’s salary is larger relative to other teachers in his same region. The second and third
measures make use of a benchmark salary. The Master’s degree plus 10 years of experience
benchmark (MA+10 years) is the salary in the teacher’s district earned by his peers with a Master’s
degree and 10 years of district experience. This benchmark is included as a main effect but also as a
ratio to the regional average of the benchmark salary.3 The ratio represents the benchmark salary in
his current district as a percentage of the regional average salary for teachers with the same
qualifications. Both benchmark measures help capture the impact of a teacher’s expectations of
future earnings on career path decision. Opportunity costs decrease as each of these measures
increase. The final measure represents the salaries teachers could obtain in non-teaching position.
Using the 2000 Census Public Use Microdata Samples, I calculated the median annual wage earned
by college degree-holding workers aged 22 to 64 within the teacher’s county. Workers employed in
1 Open positions at other schools within the same region are a strong proxy for the other teaching jobs to which teachers consider transferring at the end of each school year. Between 1994 and 2001, 89 percent of observed teacher transfers were among schools within the same region. If same-district transfers are excluded (salaries are constant within districts), 57 percent of observed inter-district transfers were within the same region. Excluding teachers transferring from a New York City school where the district is contiguous with the region (hence inter-district transfers are across region), 72 percent of all inter-district transfers are within the same region. All relative salary measures are weighted by openings within the teacher’s subject area. 2 Regional average weighted by vacancies in a teacher’s subject. 3 Regional average weighted by vacancies in a teacher’s subject.
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the education sector are excluded from the calculations. Opportunity costs rise with non-teaching
wages.
I collected data on community amenities from extant data sources including data available on
the New York State and the National Center for Education Statistics (NCES) websites, the New
York State GIS Clearinghouse, the Economic Research Service (ERS) at the U.S. Department of
Agriculture, the U.S. Census Bureau, the U.S. Bureau of Labor Statistics, the U.S. Department of
Housing and Urban Development, and the U.S. Department of Commerce’s annual Zip Code
Business Patterns dataset. These data capture a broad set of the amenities a community offers its
residents. A particular strength of these data is the ability to calculate distances between schools and
community amenities rather than indicator variables for the presence of these amenities in a school’s
community. Below I review the process used to map amenities to schools.
3.1 Defining Rural
A challenge facing all rural research is the lack of a single definition of rural. The Rural
Policy Research Institute (2006) identified nine different rural definitions commonly used in
research. For this work, I triangulated three classification schemes to develop a six-point scale of
community type in New York State:
1. Non-metropolitan rural
2. Metropolitan rural
3. Suburban
4. Other Urban
5. Big Four City
6. New York City
The eight-category Johnson Locale Codes are included in the annual Common Core of Data
released by NCES. Using this scheme, I labeled schools as rural, suburban, or urban. Rural
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communities are not a homogenous group, and community characteristics are likely correlated with
how close the community is to an urbanized area. The nine-category county-level Beale Codes (or
urban-rural continuum codes) released by the U.S. Census Bureau allowed me to divide the rural
schools into rural schools in metropolitan counties and those in non-metropolitan counties. Finally,
the New York State Education Department’s annual Community Setting Codes separate the urban
category into schools in New York City, the Big Four Cities (i.e., Buffalo, Rochester, Syracuse, and
Yonkers), and other urban communities (e.g., Albany, Binghamton, Elmira, Glens Falls, Ithaca,
Middletown, Newburgh, Poughkeepsie, Rome, Schenectady, Troy, Utica, etc.).
Map 1 plots all public schools in New York State by their community type. The definition of
community type developed here visually aligns to how we generally view the rural-urban spectrum.
Suburban communities encircle urban centers. Outside suburban areas are the rural communities.
Non-metropolitan rural schools are concentrated in the Black River-St. Lawrence and Lake
Champlain-Lake George regions in the North Country and the three Southern Tier regions (west,
central, and east) along the border with Pennsylvania.
(Insert Map 1 about here)
During the 9-year period of this study, there were approximately 2.8 million students
educated by almost 180 thousand teachers in 42 hundred public schools administered by 705
districts. New York City Public Schools alone accounts roughly a third of all students, teachers, and
schools. Excluding New York City, a truly unique educational environment not only within the State
but also the nation, a substantial share of the New York State education system is situated in rural
communities. Approximately a third of students and teachers are in rural communities. Roughly 40
percent of schools are in rural communities and almost two-thirds of districts contain at least one
rural school.
3.2 Measuring Community Amenities
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Guided by the exploratory work on rural teacher retention, I developed measures of the
following seven community amenities:
Geographic isolation: distance from the school to the nearest hub or primary airport4
Professional isolation: distance from the school to the nearest teacher education program5
Access to medical services: distance from the school to the nearest hospital
Access to family networks: distance from the school to the teacher’s hometown6
Availability of shopping: factor of distance-weighted sums of shopping establishments within
school’s community
Socio-economic health: factor of distance-weighted socio-economic indicators of the school’s
community
Adequate housing: distance-weighted average of fair-market rents for 2-bedroom apartments
within the school’s community
Principal component factor analysis was used to calculate the shopping and socio-economic health
factors. Shopping establishments were measured at the zip code level and includes hardware stores,
grocery stores, general merchandise stores, apparel stores, shoe stores, jewelry stores, drug stores,
book stores, sporting goods stores, and restaurants (alpha = 0.9896). The indicators of socio-
economic health are the community’s unemployment rate, percent of adults without a high school
4 Hub airports in New York are: Albany International, Buffalo-Niagara International, Greater Rochester International, John F. Kennedy International, LaGuardia, and Syracuse Hancock International. Primary airports in New York are: Binghamton Regional, Chautauqua County/Jamestown, Clinton County, Elmira/Corning Regional, Ithaca/Tompkins Regional, Long Island MacArthur, Oneida County, Stewart International, and Westchester County. 5 I included the 114 teacher education programs at non-proprietary four-year colleges and universities and graduate only institutions. 6 Information on a teacher’s hometown is the same information used in Boyd et al. (2005a). Either the zip code of the teacher’s high school or of the mailing address they provided when they applied to the SUNY system is used to indicate the teacher’s hometown. This information is missing for approximately a quarter of rural teachers in my sample.
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diploma, percent of adults with a college degree, median household income, youth poverty rates, and
average annual salaries (alpha = 0.8731).7
Extant data for these measures were available at three different levels—specific location or
address, zip code, and county—and each required a different process for mapping the amenities to a
school’s community, which I define as a 20-mile radius around the school.8 For the distance
measures, school and amenity addresses were geocoded and straight-line distances were calculated.
Data on shopping establishments and average salaries are all measured at the zip code level. To map
these to a school’s community, I calculated the distance from each school to the centroid of each zip
code within the school’s community. These distances were used to calculate the distance-weight
sums. These sums are more effective at capturing competition among goods and services providers
than would measures of the distance to the nearest establishment. Sums also may reflect quality to
the extent greater competition yields higher quality products. County-level data (e.g., the remaining
socio-economic health indicators and fair market rents) was first assigned to individual zip codes and
then mapped to school community’s following the process for zip code level data.9 For schools
within 20 miles of New York State borders, I include data from those neighboring state zip codes
(i.e., Vermont, Massachusetts, Connecticut, New Jersey, and Pennsylvania) in the measures of
community amenities.
As Table 2 shows, there are significant differences in community amenities across
community type. Rural schools have the poorest set of amenities. They are farther on average from
7 Median household income pertains to the income earned by residents of the school’s community whereas average salaries pertain to the salaries paid out by establishments within the school’s community. 8 20 miles was chosen as available evidence suggests this distance is a good measure of the geographic size (or “localness”) of teacher labor markets. Boyd et al. (2005a) found that 65 percent of beginning teachers in New York took a first job in a school within 15 miles of their hometown. Using nationally-representative data, Reininger (2006) finds that teachers are much more likely to work within 20-miles of their hometown eight years after graduating than are workers in almost forty other professions. 9 In New York, not all zip codes are fully contained within counties. The website www.melissadata.com indicates the percentage of a zip code’s addresses that are within each county. For those zip codes crossing county boundaries, the distance-weighted data were multiplied by these percentages.
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an airport, teacher education program, and hospital. They also have the fewest shopping
opportunities and the poorest socio-economic health. For example, non-metropolitan rural schools
are on average 37 miles from an airport versus 12 miles for suburban schools and the shopping
opportunities are on average one standard deviation below the state average whereas suburban
communities are 0.6 of a standard deviation above the state average. Teachers in these rural schools
are also 14 miles farther from their hometowns on average than teachers in suburban schools (45
versus 31 miles). However, these rural communities have cheaper rents than non-rural communities
($588 in non-metropolitan rural communities versus $789 in suburban communities) which may
help them retain teachers at least to the extent that the rents reflect factors beyond the poorer
amenities available in rural areas and to the extent the amenities I measure here reflect the amenities
set reflected in rents.10 Distance to the nearest airport, hospital, teacher education program, and
teacher’s hometown and fair market rents are hypothesized to have positive relationships with
teacher attrition while the shopping and socio-economic health amenities are hypothesized to have a
negative relationship.
(Insert Table 2 about here)
Before proceeding, my hypothesis that teachers prefer cheaper rents deserves additional
discussion. Rents are a function of the demand for and supply of rental units. Demand for rental
units in turn is partly a function of the market value of the amenities available in the local
community. Therefore, communities with richer amenities such as closer proximity to an airport,
more numerous shopping venues, and better socio-economic health should be expected to have
higher rents. This correlation is evident in Table 2. However, it’s a safe assumption that given two
communities with identical amenities, teachers on average will prefer the community with cheaper
rents. A model relating rents to teacher retention therefore must capture the value of these
10 Throughout this analysis, all dollar statistics such as rent, salaries, and incomes have been converted to 2004 dollars.
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amenities. Otherwise, the coefficient on rents would suggest teachers have preferences for more
expensive rents when in fact the coefficient is measuring their preferences for the richer amenities
reflected in the higher rents. To the extent that the variation in the amenities I measure capture the
variation in the amenity set factored into rents, my estimated coefficient on rents reflects teacher
preferences for rents net of their preferences over other amenities.11
Geospatial plots of the variation among rural schools on these seven community amenities
reveal a common pattern. With the exception of distance from hometown and monthly rents,
amenities are highest for rural schools located closest to major travel routes such as I-90 connecting
Albany and Buffalo. Thus, rural schools located in the North Country (northwest corner) and
Southern Tier regions (along border with Pennsylvania) tend to have the poorest amenities.
Accordingly, rents are lowest in these regions and increase with proximity to major interstate
highways. Map 2 plots the hometowns of beginning teachers who grew up in or near New York
State. A clear majority of beginning teachers grew up in New York. The density of dots aligns with
population density. As Map 3 demonstrates, the pattern of average distance from these hometowns
and their initial school is more random than for the other amenities such as distance to the nearest
airport.
(Insert Map 2 about here)
(Insert Map 3 about here)
3.3 School-Level Retention Model
I conduct to sets of analyses on teacher retention. In the first, I examine teacher retention
across community type in order to place New York State’s rural teacher retention in the broader
11 This also requires that teachers have the same preferences over amenities as other individuals with demand for rental units. Teacher demand for rental units is only one component of the overall demand. Therefore, if teacher preferences differ from the preferences of the average individual, my models will fail to capture the contribution to rents of renter preferences for amenities. I have no reason to believe that teachers have systematically different preferences for amenities than the average individual.
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state-wide context. Here I am interested in testing the hypothesis that rural teacher retention differs
from non-rural teacher retention. In these models, I incorporate the standard set of retention
factors—teacher characteristics, salary, school characteristics, and opportunity costs. I delve deeper
into rural teacher retention in the second set of analyses. Here, I restrict my sample to rural teachers
and include community amenities in the models. In these models, I test the hypothesis that teacher
retention is lower in rural communities with poorer community amenities. Both sets of analyses are
guided by the same model of school-level teacher retention.
Hedonic wage theory (Rosen, 1974; Mortensen, 1990; Hwang et al., 1998) is frequently used
by economists to model the labor decisions of workers. In brief, when faced with a set of job offers,
workers select the job offer that maximizes their utility and provides them with the greatest value.
Both utility and value are determined by the wage rate and the non-wage job attributes (e.g., working
environment, tasks performed, colleagues, etc.). Assuming there is a job offer with a value exceeding
their reservation wage, the worker will accept the job with the highest value. Otherwise, they will
choose no offer and be unemployed. Workers seek to maximize their utility both when selecting
their first job and when deciding whether or not to switch jobs. This analysis extends this theory to
include in the workers’ job offer valuation the amenities of the community in which the jobs are
located. I examine this valuation process by estimating a series of discrete-time competing-risk
hazard models. I detail both the theory and the model in turn below.
The concept of implicit prices for non-wage job attributes (and, by extension, community
amenities) is at the heart of hedonic wage theory. Each job offer is characterized by a wage (wj), a n-
dimensional vector (xj) of non-wage attributes and a n′-dimensional vector (zj) of amenities provided
by the school’s community. Implicit prices convert teacher preferences over these attributes and
amenities to monetary values so that they can be combined with the wage rate to determine the
value or utility of the job offer (1).
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(1) ),,|,,( mmmjjjmjmj qpAzxwvvU
The value (vmj) the jth job offer provides the mth teacher is determined by the wage rate, the non-job
attributes, and the community amenities given the teacher’s characteristics (Am) that affect his
valuation of the jth job offer. The teacher-specific implicit price vectors (pm and qm) reflect the his
preferences over attributes and amenities, respectively. Teachers will prefer the job offer that
provides the maximum value.
With respect to this retention analysis, a teacher’s career decision is determined by equation
2. It details the decision rules the teacher uses to select which job offer to accept among all available
to him (Jm). In the simplest sense, a teacher makes one of three career decisions at the end of each
academic term: remain at current school j; switch to a different school k; or leave the New York
teacher labor force. The teacher will be retained, R, at his current school if it continues to provide
the greatest value. Should he have a job offer from another school that he values more (i.e., provides
him more satisfaction than his current job), he will not be retained in his current school. Instead, he
will accept the maximum value offer and transfer, T, to the new school. He will leave, L, the teacher
labor force if none of the teaching job offers available to him exceed his reservation value (vm*).
In order to examine this annual valuation process, I estimate a series of discrete-time
competing-risk hazard models of the transfer and quit decisions of first-time teachers. I follow these
teachers until they separate from their initial school and thus observe at most one transition
[1] R if vmj ≥ vmk and vmj ≥ vm* for all k ≠ j Jm
(2) D = [2] T if vmk > vmj and vmk ≥ vm* for some k ≠ j Jm
[3] L if vmj < vm* for all j Jm
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outcome for each teacher.12 The decision to initiate a teaching spell at a second school is not random
and including these later spells would introduce a form of selection bias into my results.
I define the risk set to include the following three career decision alternatives (d) explained in
equation 2. At the end of each academic term, the teacher revalues of each of his three career path
decision alternatives (d=1, 2, 3). He selects the highest-value alternative. The conditional probability
that teacher m chooses to remain in his current school (d = 1) or elects to make a job transition (d =
2 or 3) at time t (given he has not yet made a transition) is:
(3)
)~)((exp1
)~)(exp(
))((exp
))(exp()|Pr(
3
2
3
1
d
mt
d
d
d
mt
d
d
mt
d
d
d
mt
d
ddd
mt
vt
vt
vt
vttTtT
Td represents the year of experience at the end of which the teacher is observed either transferring
schools (d=2) or leaving the teacher labor force (d=3).13 The notation 1~mt
d
mt
d
mt vvv
for d, d′ = 2 or
3 in the second expression indicates that the probability of a job transition is determined by the
attributes of alternative job opportunities to those of the current job. )(td is a function used to
determine how the probability of choosing a particular job decision changes with the number of
years (t) the teacher has been in his teaching spell. It allows for duration dependence. I assume the
following non-parametric form for the baseline hazard:
12 Data accuracy checks were conducted to identify and impute teacher records in cases where teachers were erroneously absent from the annual administrative datasets. For example, assume I observe a teacher in period t, but not the following year (period t + 1) even though he was still teaching in a New York public school but for whatever reason does not appear in the dataset. I would (erroneously) conclude that he left the New York teacher labor force at the end of the first period. But now assume I observe him in the data two years later (period t + 2). I would (erroneously) conclude that he returned to the classroom after a one-year hiatus. In all cases where the data suggest a teacher left teaching, I conducted data checks by looking two years out. If I observe the teacher returning to the classroom and his years of teaching experience increased by two years rather than one, I imputed the missing records. This helps prevent my attributing teacher career path decisions to these data inconsistencies. 13
When a teacher appears in the dataset in one year but not the following year, I assume he left the teacher labor force. The data do not allow me to differentiate between several career path decisions, all of which are coded as leaving in my analysis. He could have taken a non-teaching job, decided to teach at a private school in New York, or to take a teaching job in another state. It is also possible that a teacher returns to a public school classroom but on a part-time basis. The data allow me to observe this occurrence; however, part-time teachers comprise less than 5 percent of all teachers during the observation period and only a portion of these were previously full-time teachers.
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(4) )(...)2()1()( 21 ntItItIt d
n
ddd
where I is an indicator function equal to 1 if its argument is true. The number of terms in equation 4
depends on how many years a teacher is observed making a career path decision.14
The value at time t of a given decision alternative (d) to the mth teacher takes the following
form:
(5) d
t
d
mt
d
mt
d
mt
dd
mt czxv 3210
Here, the value of the alternative is a linear function of the teacher’s characteristics (xmt), the
characteristics of the initial job (zmt), and the characteristics (i.e., opportunity costs) of the alternative
job opportunities available to the teacher (cmt). The subscript t acknowledges that some
characteristics of the teacher, initial job and opportunity costs are time-variant. d
t is a calendar year
fixed effect. The scalar d
0 and vectors d
1 , d
2 , and d
3 are estimated.
In order to model transfer and quit decisions as one-sided, I assume all separations are
teacher-driven.15 This likely holds for teachers who have received tenure which is granted after
teaching for three years in the same district. Although the law (NY CLS Educ §§3014 and 3020)
allows superintendents and principals greater flexibility in dismissing probationary teachers, available
research suggests teachers are rarely involuntarily terminated. Data from Florida’s 2006-2007 teacher
exit interview show less than 5 percent of exiting teachers had their employment involuntarily
terminated (FLDOE, 2008). This percentage was likely lower prior to the strengthening of state
accountability systems which post-date most of the time period under study here.
14 For key covariates, I test if their relationship to teacher separation probabilities remains constant as the teacher gains teaching experience by interacting them with a continuous time trend variable that takes on integer values from 1 to 9 indicating depending on how many years of experience the teacher has at the time he is observed making a career path decision. Higher-order interactions are also explored to maximize model fit. 15 During this period, several schools closed. Teacher observations in these schools in these years are not included in the analysis has all these teachers did not have the option of remaining in their current position.
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Observed school separations are also unlikely to have been the result of involuntary
reductions in force as the number of teachers employed increased between 1994 and 2002 in rural
and non-rural schools (Table 3). Overall, the sum full-time equivalent (FTE) across all teachers
increased by 16.7 percent in upstate New York with the metropolitan rural and suburban schools
experiencing the largest increases (20.6 percent each) and non-metropolitan rural schools the
smallest increase (8.5 percent). The size of entering beginning teacher cohorts, the focus of this
analysis, more than doubled during this time period. Cohorts increased among teachers of all
subjects with the exception of occupational education teachers which decreased by 5.9 percent
overall (not shown in table).
(Insert Table 3 about here)
Therefore, if a teacher is observed remaining at his current school, the analysis assumes the
teacher’s job offer set contained no job offers providing greater utility than their current position.16
A teacher moving to another school reveals that utility derived from the new position exceeded that
of the old position. Finally, when a teacher exits the teacher labor market, it signals that he faced no
teaching job offer that exceeded his reservation wage.
3.4 Limitations
Despite the wealth of data collected for this study, there are two key sources of bias for
which I may not have sufficiently controlled and which prevent me interpreting the results as causal
rather than correlational. The first is self-selection bias. There could be something unobserved about
the teachers related to their initial decision to accept jobs in rural schools and/or in poor amenity
rural communities that is also correlated with a higher propensity to separate. For example, it could
16
This analysis does not distinguish between teachers who remain in their same teaching post and those who change
posts within the same school. For example, teachers who move from teaching 2nd grade to teaching 3rd grade are considered to have remained in their current job. All movements are assumed to be voluntary decisions on the part of the teacher. However, within-school movements are often involuntary decisions made by school administrators in response changing enrollment patterns.
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be that beginning teachers do not want to be rural teachers yet rural positions were the only jobs for
which they received employment offers. They would have preferred teaching at another school, but
accept the rural teaching offer because they prefer to have any job versus being unemployed.
Consequently, they begin their careers more committed than other teachers to searching and getting
a job in another school. If more teachers in rural schools versus non-rural schools begin their careers
with this mentality, rural beginning teachers are predisposed to lower retention rates than teachers in
non-rural schools.
Another concern is bias introduced in the estimates from an omitted variable which is both
correlated with teachers’ labor market decisions and key covariates such as community amenities.
Marital status and fertility behavior are two sources of potential bias as they are in all but a handful
of studies. Stinebrickner (1998, 2001, 2002) finds lower retention rates for married teachers, higher
retention rates for teachers who are parents, and higher attrition rates for female teachers when they
have a newborn. I do not have any information on either marital status or fertility behavior; except
to the extent these are correlated with age. However, failure to include these in my model will only
bias my community type or community amenity estimates if marital status and fertility behavior
differ systematically between rural and non-rural schools or with different levels of amenities which
is not readily obvious.
4. Results
There are sizeable differences across community type in observed teacher career path
decisions. Figure 1 plots the percent of beginning teachers deciding to remain at their initial school
after each year of teaching by community type. At the extremes, suburban schools retain the most
teachers, and the schools in the Big Four Cities retain the fewest. However, non-metropolitan rural
schools also have substantial difficulties with teacher retention, retaining the second lowest percent
of beginning teachers. To characterize these difficulties, it helps to compare teacher retention in
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rural schools to that in suburban schools where retention rates are the highest. After their first year
of teaching, non-metropolitan rural schools have retained almost 2 percentage points fewer teachers
than suburban schools. This retention gap grows over the next three years as a significantly greater
percentage of non-metropolitan rural teachers compared to suburban teachers choose to leave their
initial schools. At the end of the fourth year, almost 7 percentage points more of the initial cohort
hired in the non-metropolitan rural schools have either transferred to another school or quit
teaching than is the case among the initial cohort hired in the suburban schools.
(Insert Figure 1 about here)
Non-metropolitan rural schools also have a harder time retaining teachers than rural schools
in metropolitan counties. At the end of the fourth year after the cohort of beginning teachers were
hired, non-metropolitan rural schools have needed to replace almost 4 percentage points more of
their beginning teachers than rural schools in closer proximity to urban areas.
There are also substantial differences in the retention of critical-shortage subject teachers
(i.e., mathematics, science, and special education) and multiple-subject teachers across community
type (see Table 4). At the end of third year after the beginning teachers were hired, non-
metropolitan rural schools compared to suburban schools have had to replace almost 15 percentage
points more of their mathematics teachers, five percentage points more of their science teachers, 4
percentage points more of their special education teachers, and 6 percentage points more of their
multiple-subject teachers. In fact, there are also substantial retention differences between rural
schools in metropolitan and non-metropolitan counties particularly for science and multiple-subject
teachers. Again, at the end of the third year after the beginning teachers were hired, non-
metropolitan rural schools compared to metropolitan rural schools have had to replace 6 percentage
points more of their science teachers and 8 percentage point mores of their multiple-subject
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teachers. The differences in retention rates between metropolitan rural and suburban schools are less
severe.
(Insert Table 4 about here)
The question remains, however, as to the extent to which these differences can be explained
by measureable differences across community type in teacher characteristics, wages, non-wage job
attributes, and opportunity costs or by unmeasured differences in the community types themselves.
Community type means (see Table 5) suggest these predictors of teacher retention work against each
other. For example, starting salaries are the lowest for rural teachers suggesting lower retention rates
relative to other community types. Yet, rural teachers face the lowest opportunity costs which theory
suggests should drive rural retention rates higher than in other community types. Teachers should
find rural schools more attractive than suburban schools on some non-wage job attributes such as
class size but less attractive with respect to others such as percent of students eligible for free or
reduced-price lunch.
(Insert Table 5 about here)
Rural beginning teachers also differ from their non-rural peers. They are more likely to be
male and non-white than teachers whose first job is in a non-rural school. A beginning rural teacher
is more likely to teach high needs subjects such as math and science (though beginning suburban
teachers slightly higher) and more likely to teach multiple subjects than non-rural first-time teachers.
Rural teachers are less likely to be teaching out-of-field (i.e., teaching subjects in which they are not
even provisionally certified) than peers in urban and Big Four Cities but more likely than their
suburban peers.
Below I present results from two sets of analyses. In the first, I test the hypothesis that rural
schools have a harder time retaining teachers even after accounting for differences in key
determinants of their retention decision. I then delve deeper into the rural labor market to test the
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hypothesis that rural schools with relatively poor amenities experience greater difficulties retaining
teachers than rural schools with a richer amenity set to offer teachers.
4.1 Predicting Retention Across Community Type
I estimate a series of four models to test the robustness of the relationships between
community type and teacher retention to the inclusion of more and more covariates. I begin with
the base model which I refer to as the problem description model. It includes the time trend (i.e.,
years of teaching experience), indicators of school community type where suburban communities are
the reference, and interactions between community type and the time trend. The interaction terms
capture the differential annual attrition rates across community type noted above. In the second
model, I add a full array of teacher characteristics including subject(s) taught. I add salary and non-
wage job attributes in the third model, and opportunity costs in the fourth model.
Coefficients on the community type covariates from the four models of beginning teacher
retention across community type are presented in Table 6 (full results are available from the author).
Each model includes the nine teaching experience indicator variables, a continuous time variable
interacted with community type (non-metropolitan rural, metropolitan rural, other urban, and Big
Four Cities), quadratic and cubic non-metropolitan-by-time interactions, quadratic Big Four Cities-
by-time interactions, and indicator variables for the four community types.17
(Insert Table 6 about here)
In order to better understand the effect of accounting for additional predictors on the
beginning teacher retention gap between suburban schools and schools in other communities, I
convert the estimated coefficient (i.e., log odds ratios) to predicted retention probabilities for each
community type. Figure 2 displays the differences in the predicted retention rates between suburban
17 This specification of the time trend was selected after iteratively adding the community type-by-time interactions and estimating a Wald test of joint significant (i.e., transfer vs. stay and quit vs. stay). Terms that failed the Wald test (i.e., were insignificant) were dropped and added higher-order terms were added when the Wald test was rejected.
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and non-metropolitan rural schools. For example, consider two cohorts of beginning teachers. One
cohort began their teaching careers in suburban schools and the other in non-metropolitan rural
schools. If three years later at the end of the school year we observe the schools at which each
cohort was initially employed, the problem description model predicts we would find that roughly 6
percentage points fewer members of the non-metropolitan rural cohort compared to the suburban
cohort had taught at their initial school in each of the preceding three years and had committed to
return to that same school for a fourth year. If we returned seven years later, we would find roughly
4 percentage points fewer of the original group of non-metropolitan rural cohort members
(according to the problem description model) agreeing to teach at the same school for an eighth
consecutive year than we would observe among the suburban cohort.
(Insert Figure 2 about here)
With respect to a specific cohort of first-time teachers, non-metropolitan rural schools are
predicted to retain fewer teachers than suburban schools after each of the first five years after the
cohort was initially hired. It is not until school characteristics (which includes salaries) are added to
the model that the survival functions for non-metropolitan rural and suburban schools cross (i.e.,
the difference between the two is zero). This occurs between the fifth and sixth years of the
teachers’ careers. This suggests differences in the salaries and non-wage job attributes of non-
metropolitan rural and suburban schools are major contributing factors to differences in retention
rates.
Metropolitan rural schools are predicted to have retained fewer teachers than suburban
schools at the end of each year regardless of the set of covariates included. These results, similar to
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non-metropolitan rural schools, demonstrate that much of the difference in retention rates from
suburban schools is driven by differences in salary and non-wage attributes.18
Turning attention to these other factors of teacher career paths, the results suggest they
influence labor market decisions in similar ways in rural and non-rural settings. Wald Tests
consistently indicated the relationship between a predictor (e.g., salary, opportunity costs, subject
taught, etc.) and a teacher’s decision to transfer or quit did not significantly differ across community
type. For example, the relative difficulty of retaining a math teacher versus a non-math teacher, for
example, is the same in a rural non-metropolitan school as a suburban school as a Big Four City
school.
Schools have a particularly challenging time retaining special education and multiple-subject
teachers. The full model predicts that special education teachers are 37 percent more likely
)05.;1(exp 3080 p to transfer from their initial school and 9 percent more likely to quit
)10.;1(exp 0830 p . Multiple-subject teachers are 30 percent more likely to transfer and 28 percent
more likely to quit (both p<.05). These are particular concerning for rural schools where special
education and multiple-subject teachers comprise a greater share of beginning teachers. I tested if
the relationship between subject taught and teacher retention varied with teaching experience. All
the interactions between subject taught and the continuous time variable failed to reject Wald Test
suggesting the relationship remains constant with experience.
Salary and non-wage job attributes such as enrollment and student demographics are all
significant predictors of teacher career paths. Teachers earning higher salaries are more likely to
remain at their initial school. A ten percent increase in teacher salaries is associated with a 29 percent
18 A pattern similar to that in rural non-metropolitan schools is observed in urban schools. In the full model, retention rates in urban schools exceed that in suburban schools in the 6th year and later. And while holding salary, non-wage job attributes, and opportunity costs constant between the Big Four Cities and suburban schools, the additional share of teachers leaving inner city schools relative to suburban schools grows monotonically with years of experience.
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decrease in the probability of quitting the teacher labor force (p<.01). Higher salaries are also
associated with a lower probability of transferring away from their initial school, though the
relationship is not significant. Additionally, beginning teachers at smaller schools are statistically
more likely to transfer and to quit (p<.01). Higher concentrations of minority students are associated
with a higher likelihood of quitting (p<.01), and higher rates of student poverty predict higher
transfer rates (p<.05).
Whereas the relationship between teacher salaries and their labor market decisions conforms
to theory and the literature, opportunity costs are less consistent with the theory. The coefficients
for non-teaching salaries suggest teachers’ are more likely to separate from their current school when
non-teacher college-educators workers in the same region earn higher wages. A ten percent increase
is associated with a 7 percent greater likelihood of transferring away from the initial school (p<0.01)
and a 5 percent greater likelihood of quitting (p<.05). This is less than a fourth of the teacher salary-
retention elasticity indicating teachers are much more responsive to their own wages than the wages
they could earn through outside employment.
Results for the relative teacher salary measures tend to contradict theory more than affirm it.
Coefficients for the relative wage ratio (i.e., teacher salary to average salary of all teachers within the
same region) indicate teachers who earn more relative to other teachers at nearby schools are less
likely to transfer (conforming to theory; insignificant) but more likely to quit (contradicting theory;
p<.01). Higher expected wages, as measured by the MA+10 years benchmark salary, are associated
with lower retention rates rather than higher retention rates as predicted. The estimated elasticity
indicates a ten percent increase is correlated with an 18 percent greater probability of quitting
teaching (p<0.01). The benchmark wage ratio (i.e., current district benchmark salary relative to the
average benchmark salary of nearby districts) is associated with higher transfer probabilities
(contrary to theory; insignificant) and lower quit probabilities (conforming to theory; p<.01). If the
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higher benchmark salaries indicate districts are backloading salary increases, these results could
indicate teachers heavily discount the future. Finally, having more schools within 20 miles is
associated with higher separation probabilities, which confirms the theory (i.e., more local schools
lowers transfer costs and increases transfer rates). This relationship, though statistically significant, is
very small.
4.2 Predicting Retention within Rural Schools
The above analysis of both rural and non-rural schools demonstrates persistent retention
gaps between rural and suburban schools, especially in the early years of a teacher’s career, even after
accounting for teacher characteristics, salary, non-wage job attributes, and opportunity costs.
Additionally, it showed non-metropolitan rural schools have a harder time retaining teachers than
rural schools in metropolitan counties. Might differences in amenities among rural communities
explain the variation in teacher retention at rural schools?
Again, I estimate four models. The problem description model includes the time trend and
seven measures of community amenities (i.e., distance from an airport, hospital, teacher education
program and hometown, shopping, socio-economic health, and 2-bedroom rents). The second
model adds teacher characteristics, the third adds information on salaries and non-wage job
attributes, and the fourth adds the opportunity cost measures. Selected coefficients from these
models are presented in Table 7.
(Insert Table 7 about here)
Distance to hometown has the most robust association with teacher retention. Teachers are
much more likely to remain at their initial school the closer it is to their hometown. The farther
from home they are, the more likely they are to both transfer schools and quit teaching. Holding all
other variables at the rural school mean, approximately 3.5 percent more teachers are retained each
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year when they are working 10 miles from their hometown versus 40 miles from their hometown
(70th versus 30th percentile).
Economic amenities such as shopping, socio-economic health, and rents also predict teacher
retention. Teachers are less likely to transfer from and quit schools in communities with greater
access to shopping, less likely to transfer away from schools in communities with better socio-
economic health, and more likely to transfer from and quit schools in communities with higher
rents. While these three are not all significant in each model, the directions of these relationships are
consistent.
Interpreting individual odds ratios on the amenity measures is complicated by moderately
high correlations between some of them. Take, for example, the economic amenity set of shopping,
socio-economic health, and rent. Communities with greater access to shopping are also communities
with better socio-economic health (r=0.68) and higher rents (r=0.55). Communities with better
socio-economic health have higher rents (r=0.78). Although high correlations present interpretation
challenges, they are desirable from a theoretical viewpoint. It makes sense that shopping
establishments would be concentrated in communities with a population with greater ability to
spend (i.e., better socio-economic health). And it makes sense that landlords view this greater ability
to spend as an opportunity to raise rents.
To view how the retention rates vary as the values of these amenities change, I estimated
predicted probabilities as the economic amenity set moved together from the poorest values to the
richest values (i.e., least shopping, lowest socio-economic health, and highest rents to most
shopping, highest socio-economic health, and lowest rents). Results of a Wald Test reject the null
hypothesis that the odds ratios for these three amenity measures are simultaneously equal to zero.
As more factors are held constant at the rural school mean, improvements in the economic
amenity set predict substantially higher retention rates, especially once the effects of salary and non-
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wage job attributes are taken account (see Figure 3). Compare, for example, schools in communities
at the 70th percentile (i.e., shopping 0.4 standard deviations below the state mean, socio-economic
health 0.5 standard deviations above the state mean, and 2-bedroom rents of $569 a month) to
schools in the 30th percentile (i.e., shopping 1.1 standard deviations below the state mean, socio-
economic health 0.6 standard deviations below the state mean, and 2-bedroom rents of $669 a
month). Without controlling for any other factors, schools in the richer amenity community relative
to schools in the poorer amenity community retain about 2 percent more beginning teachers each
year (see Figure 4). This predicted retention advantage grows to 5 percent annually once all other
factors are held constant.
(Insert Figure 3 about here)
(Insert Figure 4 about here)
The relationship between community amenities and teacher retention rates is even more
pronounced when a school’s entire amenity set (i.e., all seven measures) is simulated to move from
the poorest to the richest values (see Figure 8). Predicted retention rates from the problem
description model indicate that schools with the richer amenities retain almost 5 percent more
beginning teachers annually. Accounting for the full set of controls, the retention advantage of the
richer amenity schools grows to just over 8 percent annually.
Failure to account for differences in salaries and opportunity costs across rural teachers not
only downward biases the correlations between community amenities and rural teacher retention but
also fails to reveal an important aspect of rural teacher retention. Rural teachers earning higher
salaries are more likely to be retained than teachers earning lower salaries. Echoing the results from
the across community type model, teacher salaries are shown to have an association with teacher
quit decisions (p<.01) and not transfer decisions once opportunity costs are included in the model.
Opportunity costs, on the other hand, are shown to have the opposite pattern—i.e., an association
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with transfer decisions but not quit decisions. Rural teachers earning higher salaries relative to the
local average are less likely to transfer than those earning relatively lower salaries (p<.05) as are
teachers working in districts with larger benchmark salaries (p<.01).
I also estimated a version of the problem description model that included interactions
between the amenities and the time trend. Wald test results all failed to reject the null hypothesis that
all were simultaneously equal to zero. This indicates that the relation between amenities and annual
attrition rates may not vary as teachers gain more experience. Additionally, Wald tests on the odds
ratios for the interaction between amenities and subject taught also failed to reject the null
hypothesis that all were simultaneously equal to zero. This indicates that the relationship between
amenities and retention does not vary across subject taught.
Once the sample is restricted to rural teachers, some of the relationships measured in the
across-community type models become more pronounced. Rural schools have particular challenges
retaining critical-shortage subject and multiple-subject teachers relative to teachers of other subjects.
Holding the full set of retention factors constant at the rural school mean, mathematics teachers are
19 percent more likely to transfer from their initial school (p<.05), special education teachers are 56
percent more likely to transfer (p<.01), and multiple-subject are 18 percent more likely to transfer
(p<.05) and 33 percent more likely to quit (p<.01). Their ability to retain science teachers does not
significantly differ from their ability to retain other non-critical-shortage subject and non-multiple
subject teachers.
Several school characteristics are significantly related to rural teacher retention. Teaching in
elementary schools and larger student bodies are all associated with higher retention rates. Student
body characteristics such as percent minority and percent eligible for free or reduced lunch are
negatively associated with teacher retention (i.e., more minority and poor students are associated
with a higher odds ratio of transferring schools and/or quitting teaching) though the coefficients are
Miller – Rural Teacher Retention
30 CEPWC Working Paper Series No. 1. October 2012.
Available at http://curry.virginia.edu/research/centers/cepwc/publications. Curry School of Education | Frank Batten School of Leadership and Public Policy | University of Virginia
not significant at conventional levels. Student-teacher ratios are not significantly associated with
rural teacher retention.
4.3 School Quality Robustness Check
The influence of school quality on teacher career path decisions as been highlighted in
previous studies. If this influence differs systematically with community amenities (e.g., school
quality decreases as the distance between the school and the nearest airport increase, etc.), my
estimates of the relationship between community amenities and teacher retention will be biased.
Similarly, if the influence differs across community type, my estimates of retention rates in rural
versus non-rural settings are also biased. Although my models include several important indicators
correlated to school quality such as the percent minority, the percent limited English proficient, and
the percent eligible for free or reduced lunch, I do not include a more direct measure such as student
academic achievement. I do not have access to longitudinal student-level academic achievement
such as scores on standardized state-level examinations, but was able to collect aggregate test scores
for 4th and 8th graders in mathematics and reading via the National Longitudinal School-Level State
Assessment Score Database. These data span four of the nine years analyzed herein (1999-2002).
I re-estimated all the models described above—i.e., the series of four models for both
retention across community types and retention within rural schools—but include the average
school-level test score as a school characteristic. I standardized test scores across all schools within
each year. These models are estimated once with 4th grade test scores and again with 8th grade test
scores. I view these data as indicators of the academic performance of all students in the school
rather than just the grades tested. Consequently, I include all teachers in a school with test score data
in these models. And since there are no data on high school student achievement, I must exclude
high school teachers from these analyses.
Miller – Rural Teacher Retention
31 CEPWC Working Paper Series No. 1. October 2012.
Available at http://curry.virginia.edu/research/centers/cepwc/publications. Curry School of Education | Frank Batten School of Leadership and Public Policy | University of Virginia
The inclusion of student achievement does not change the key relationships discussed
above—i.e., retention across community type and across rural schools with varying amounts of
amenities. The estimated coefficients of the relationship between student achievement and teacher
retention are mostly insignificant (26 of the 32 estimates) and only two of six significant results align
with the hypothesis that low performing schools have greater difficulty retaining teachers. For
example, teachers at schools with higher average 8th grade reading achievement have a greater
likelihood of quitting teaching than teachers at poorer performing schools. Furthermore, the
relationship between community type and teacher retention and between community amenities and
rural teacher retention remains when these student achievement measures are included.
5. Policy Implications and Conclusions
This analysis provides evidence that rural schools have less success retaining beginning
teachers than their do suburban counterparts. It also shows rural schools have a harder time
retaining critical-shortage subject and multiple-subject teachers than teachers of other subjects.
These findings point to the need to direct additional resources toward policies aimed at improving
rural teacher retention. However, the results also show retention differences among rural schools with
those in non-metropolitan counties having lower retention rates than rural schools in metropolitan
counties which are closer to urbanized areas and more likely to be part of districts that include
suburban schools.
My results highlight observable and measurable characteristics of rural schools and their
communities that predict lower retention rates. Community amenities, heretofore not included in
models of teacher retention, are shown to have significant predictive power. Schools located in
communities with richer community amenities have higher teacher retention even after accounting
for differences in salary, non-wage job attributes, and opportunity costs.
Miller – Rural Teacher Retention
32 CEPWC Working Paper Series No. 1. October 2012.
Available at http://curry.virginia.edu/research/centers/cepwc/publications. Curry School of Education | Frank Batten School of Leadership and Public Policy | University of Virginia
Echoing previous findings of Boyd et al. (2005a and 2005b), teachers are shown to have
preferences for proximity to their hometown. Teachers at rural schools farther from their
hometown are more likely to transfer and quit. This suggests that “Grow Your Own” programs may
prove particularly beneficial in rural schools. These programs provide financial assistance to either
area high school graduates or current education paraprofessionals to earn a teaching credential and
return to teach in the community.
Schools in rural communities with richer economic amenities (i.e., shopping, socio-economic
health, and rents) have an easier time retaining teachers. One policy implication could be an
increased focus on rural community development (Beaulieu & Gibbs, 2005). Admittedly, community
development is a longer term policy goal. However, in the more short-term, policymakers can work
to ensure the expansion of broadband internet access to rural communities as a means of lessening
the negative consequences of poorer amenities. Sixty percent of rural households have broadband
Internet service compared with 70 percent of non-rural Americans (NTIA, 2011). Recent years have
seen an explosion in the amount of online shopping and online social networking available to users.
Connecting more rural teachers at faster speeds to these services will not only increase their access
to goods and services but will also diminish the sense of isolation felt by many in rural communities.
The results also highlight the role of salaries in closing retention gaps between rural and
suburban schools. Once salaries are added to the models, the differences are substantially reduced.
The fact salaries are lower in rural schools is frequently justified on the basis that cost-of-living in
rural communities is lower than in non-rural communities. Many states build geographic variation in
the cost-of-living into their funding formula for teacher salary support. The skills needed to teach
are quite portable across community type, and it appears teachers are not fully discounting the
higher non-rural salaries to reflect the higher cost-of-living. Or perhaps they are but are also
discounting the rural salaries for the psychological costs of living in a rural community. These
Miller – Rural Teacher Retention
33 CEPWC Working Paper Series No. 1. October 2012.
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psychological costs relate to the perceived disutility of working in a rural school unrelated to costs of
goods and services. For example, in a society that places emphasis on being successful in the global
marketplace, urban and not rural communities are frequently seen as the place to accomplish that
(Edmondson, 2003). States ought to adjust their funding formula to include additional salary
supports for rural schools to help them retain teachers.
If policymakers are serious about ensuring all students meet academic performance
proficiency standards, they need to be serious about providing quality teachers for all students.
Currently, rural students are serving as proving grounds for new teachers who leave rural schools at
higher rates after gaining valuable classroom experience. Policymakers must demonstrate a greater
willingness to target incentives to specific subsets of teachers and schools than is now the case (Loeb
& Miller, 2006). Policymakers must target additional resources toward the neediest rural schools.
Miller – Rural Teacher Retention
34 CEPWC Working Paper Series No. 1. October 2012.
Available at http://curry.virginia.edu/research/centers/cepwc/publications. Curry School of Education | Frank Batten School of Leadership and Public Policy | University of Virginia
Table 1. Sample of Beginning Teachers by Cohort and Community Type, 1994 to 2002
Cohort
Non-Metropolitan
Rural
Metropolitan Rural
Suburban Other Urban Big Four Cities
N % N % N % N % N %
1993-94 383 8.3 390 7.2 549 7.5 201 7.2 183 7.1 1994-95 399 8.6 395 7.3 498 6.8 205 7.3 175 6.8 1995-96 377 8.1 497 9.2 632 8.7 190 6.8 153 5.9 1996-97 407 8.8 549 10.2 730 10.0 218 7.8 249 9.6 1997-98 483 10.4 559 10.4 770 10.6 273 9.8 183 7.1 1998-99 609 13.1 678 12.6 927 12.7 366 13.1 301 11.6
1999-2000 641 13.8 748 13.9 995 13.7 453 16.2 436 16.8 2000-01 682 14.7 760 14.1 1,082 14.8 466 16.7 449 17.3 2001-02 658 14.2 809 15.0 1,107 15.2 420 15.0 463 17.9
TOTAL 4,639 100 5,385 100 7,290 100 2,792 100 2,592 100
Table 2 Average School Community Amenities by Community Type, 1994 to 2002
Airport (miles)
Teacher Education Program (miles)
Hospital (miles)
Home-town
(miles)
Shopping (z-score)
Socio-Economic
Health (z-score)
Fair Market Rent
(2004$)
Non-Metropolitan Rural 36.7 21.6 7.9 45.3 -1.0 -1.12 588.19 Metropolitan Rural 20.5 14.3 9.1 38.7 -0.4 0.2 722.39 Suburban 11.5 6.8 4.1 31.2 0.6 0.6 789.38 Other Urban 13.4 8.6 1.4 28.5 0.5 0.1 729.80 Big Four Cities 6.7 2.0 1.2 36.4 1.2 0.3 715.82
Statewide 19.4 11.9 5.6 36.4 0.0 0.0 711.96
Table 3 Percentage Change in Employed Teacher Labor Force by Community Type, 1994 to 2002
Total FTE
of All Teachers
Number of… FTE of Specific Subjects Number of Multiple-Subject
Teachers
New Hires
New Teachers
Math Science Special
Education
Non-Metropolitan Rural 8.5 38.2 71.5 6.9 18.1 52.0 16.5 Metropolitan Rural 20.6 56.8 105.1 23.8 30.1 57.0 39.5 Suburban 20.6 49.5 101.8 19.8 27.2 47.9 33.0 Other Urban 11.3 39.1 111.4 3.2 19.2 34.8 31.1 Big Four Cities 19.6 58.3 158.5 2.7 25.9 38.4 20.8
Statewide 16.7 48.8 102.9 14.1 24.9 47.0 28.8
Miller – Rural Teacher Retention
35 CEPWC Working Paper Series No. 1. October 2012.
Available at http://curry.virginia.edu/research/centers/cepwc/publications. Curry School of Education | Frank Batten School of Leadership and Public Policy | University of Virginia
Table 4 Survival Rates over First Five Years by Subject Taught by Community Type, 1994 to 2002
Years of Experience
Mathematics
Non-Metropolitan
Rural (%)
Metropolitan Rural (%)
Suburban (%)
Other Urban (%)
Big Four Cities (%)
1 72.51 70.30 76.40 69.54 56.86 2 57.13 58.89 66.76 54.08 46.15 3 45.31 48.18 59.78 49.17 37.42 4 41.50 40.95 52.49 38.99 24.95 5 36.88 36.18 43.14 32.11 24.95
Years of Experience
Science
Non-Metropolitan
Rural (%)
Metropolitan Rural (%)
Suburban (%)
Other Urban (%)
Big Four Cities (%)
1 71.94 74.74 73.66 72.81 63.37 2 58.74 63.08 62.04 59.29 44.12 3 48.62 55.02 53.72 54.35 37.26 4 41.81 47.83 48.47 48.42 28.32 5 39.16 40.51 44.32 45.57 20.23
Years of Experience
Special Education
Non-Metropolitan
Rural (%)
Metropolitan Rural (%)
Suburban (%)
Other Urban (%)
Big Four Cities (%)
1 69.13 70.00 70.00 70.92 65.53 2 54.21 57.95 57.19 58.94 51.87 3 45.64 47.86 49.69 48.12 45.02 4 38.08 38.29 41.02 39.75 36.38 5 31.32 31.35 33.90 32.77 27.44
Years of Experience
Multiple-Subject
Non-Metropolitan
Rural (%)
Metropolitan Rural (%)
Suburban (%)
Other Urban (%)
Big Four Cities (%)
1 70.55 71.76 69.24 70.65 62.89 2 51.81 59.04 56.22 57.32 49.65 3 42.93 50.46 48.79 56.33 41.09 4 33.67 42.12 43.22 41.92 31.09 5 27.70 38.40 36.12 28.82 29.26
Note. “Elementary” is one subject a teacher could teach; thus, elementary teachers are not necessarily multiple-subject teachers.
36 CEPWC Working Paper Series No. 1. October 2012.
Available at http://curry.virginia.edu/research/centers/cepwc/publications. Curry School of Education | Frank Batten School of Leadership and Public Policy | University of Virginia
Table 5 Means and Standard Deviations of Beginning Teachers Characteristics, Starting Salaries, Non-Job Attributes and Opportunity Costs by Community Type, 1994 to 2002
Non-Metropolitan Rural
Metropolitan Rural Suburban Other Urban Big Four Cities
N Mean (S.D.) N Mean (S.D.) N Mean (S.D.) N Mean (S.D.) N Mean (S.D.)
Teacher Characteristics
Female (%) 4,639 69.6 5,385 70.3 7,290 72.3 2,792 74.5 2,591 72.1
Age 4,639 29.0 (6.8) 5,380 29.3 (6.9) 7,288 28.6 (6.6) 2,790 29.5 (7.3) 2,590 30.5 (8.1)
Minority (%) 4,571 3.4 5,291 4.5 7,180 6.0 2,739 10.8 2,522 21.9
{Missing} 4,639 1.5 5,385 1.8 7,290 1.5 2,792 1.9 2,592 2.7
Failed Certification Exam (%) a 4,386 4.3 5,147 4.4 7,034 4.5 2,622 7.9 2,352 10.3
{Missing} 4,639 5.5 5,385 4.4 7,290 3.5 2,792 6.1 2,592 9.3
Graduate Degree (%) 4,631 26.4 5,379 31.9 7,274 36.7 2,787 31.8 2,582 29.4
Subject Taught (%)
Math 4,639 8.8 5,385 8.1 7,290 7.5 2,792 6.0 2,592 6.3
Science 4,639 9.4 5,385 9.5 7,290 10.1 2,792 8.5 2,592 6.9
Special Education 4,639 16.1 5,385 14.9 7,290 13.5 2,792 15.3 2,592 17.9
Multiple Subject 4,639 13.2 5,385 10.6 7,290 8.9 2,792 7.3 2,592 8.1
Competitiveness of Undergraduate Institution (%)
Most 4,364 10.8 4,923 14.8 6,734 17.3 2,499 12.1 2,329 16.0
Least 4,364 2.8 4,923 6.3 6,734 6.9 2,499 5.4 2,329 9.2
{Missing} 4,639 5.9 5,385 8.6 7,290 7.6 2,792 10.5 2,592 10.2
Type of Appointment (%)
Tenured 4,618 0.4 5,365 0.5 7,254 0.5 2,779 0.6 2,572 0.5
Probationary 4,618 84.8 5,365 79.3 7,254 77.0 2,779 80.8 2,572 70.4
Substitute 4,618 14.8 5,365 20.0 7,254 22.5 2,779 18.6 2,572 29.1
Degree to Which Permanently Certified in All Subjects Taught (%)
Not Even Provisionally Certified in Any 4,636 8.4 5,380 7.2 7,287 6.4 2,791 11.4 2,102 17.4
Provisionally in Some, Permanently in None 4,636 89.9 5,380 91.0 7,287 91.8 2,791 86.6 2,102 80.6
Permanently in Some, but Not All 4,636 0.2 5,380 0.1 7,287 0.2 2,791 0.0 2,102 0.1
Permanently in All 4,636 1.6 5,380 1.7 7,287 1.6 2,791 2.0 2,102 2.0
(Continued on next page)
37 CEPWC Working Paper Series No. 1. October 2012.
Available at http://curry.virginia.edu/research/centers/cepwc/publications. Curry School of Education | Frank Batten School of Leadership and Public Policy | University of Virginia
Table 5 (cont.) Means and Standard Deviations of Beginning Teachers Characteristics, Starting Salaries, Non-Job Attributes and Opportunity Costs by Community Type, 1994 to 2002
Non-Metropolitan Rural
Metropolitan Rural Suburban Other Urban Big Four Cities
N Mean (S.D.) N Mean (S.D.) N Mean (S.D.) N Mean (S.D.) N Mean (S.D.)
Bachelor’s 3,408 32,461 (2,667)
3,663 34,278 (3,685)
4,608 34,959 (3,655)
1,901 34,311 (3,840)
1,822 35,643 (3,692)
Master’s 1,223 35,044 (3,226)
1,716 38,171 (4,911)
2,666 39,471 (5,563)
886 38,521 (5,416)
760 38,610 (4,608)
Non-Wage Job Attributes (School Characteristics)
Elementary (%) 2,634 40.6 2,879 47.6 3,739 52.0 1,365 57.7 1,085 69.7
Middle (%) 2,634 13.1 2,879 16.6 3,739 22.2 1,365 22.7 1,085 11.3
High (%) 2,634 34.4 2,879 32.9 3,739 24.4 1,365 19.3 1,085 18.0
Other (%) 2,634 12.0 2,879 3.0 3,739 1.4 1,365 0.3 1,085 1.0
Enrollment (100s) 2,634 5.0 (2.0) 2,879 6.3 (3.2) 3,739 6.9 (3.6) 1,365 7.4 (4.6) 1,085 7.1 (3.4)
% Minority 2,634 5.3 (9.2) 2,879 5.8 (7.7) 3,739 13.1 (18.1) 1,365 32.2 (25.4) 1,084 67.9 (17.2)
% Eligible for Free/ Reduced Lunch 2,634 35.6 (14.4) 2,879 22.1 (14.6) 3,739 17.7 (16.5) 1,365 46.7 (22.3) 1,083 73.8 (19.0)
% Limited English Proficient 2,634 0.4 (1.5) 2,879 0.5 (1.3) 3,739 1.6 (4.5) 1,365 3.5 (6.0) 1,084 7.9 (11.9)
Student-Teacher Ratio 2,634 13.8 (2.5) 2,879 14.8 (2.6) 3,739 15.1 (2.7) 1,365 14.7 (2.5) 1,085 14.4 (3.0)
Opportunity Costs
Number of schools within 20 miles 4,639 35.2
(18.2) 5,385
107.0
(62.5) 7,290
181.7
(81.5) 2,792
131.0
(75.4) 2,592
212.2
(39.6)
Relative wage ratio b 4,639 0.661
(0.070) 5,385
0.636 (0.079)
7,290 0.645
(0.086) 2,792
0.648 (0.089)
2,592 0.661
(0.076)
MA+10 years benchmark ($2004) c 4,639 46,416
(6,874) 5,385
52,755 (11,013)
7,290 53,393
(11,031) 2,792
51,889 (11,640)
2,592 50,766 (8,189)
Relative MA+10 benchmark ratio d 4,639 0.974
(0.081) 5,385
0.969 (0.105)
7,290 0.966
(0.104) 2,792
0.966 (0.106)
2,592 0.961
(0.095)
Median non-teaching wage ($2004) e 4,639 40,034 (3,817)
5,385 46,001 (6,762)
7,290 48,576 (8,059)
2,792 47,174 (7,933)
2,592 46,957 (7,721)
Notes. Teacher samples are beginning teachers in their first year of teaching experience. School sample summarized in this table are all schools in each year they hired a beginning teacher. Each school appears once per year in sample. Salary sample sizes are number of beginning teachers. a Indicates that the teacher failed either the NTE General Knowledge exam or the L beral Arts and Sciences Test on their first attempt.
b Measured as a percent of average salary in region (regional average weighted by vacancies in a teacher’s subject).
c Average salary within district
d Measured as a percent of the average MA+10 years salary in region (regional average weighted by vacancies in a teacher’s subject).
e County-level measure of wages earned by college-educated workers aged 22-64 years in non-teaching position.
38 CEPWC Working Paper Series No. 1. October 2012.
Available at http://curry.virginia.edu/research/centers/cepwc/publications. Curry School of Education | Frank Batten School of Leadership and Public Policy | University of Virginia
Table 6 Selected Estimated Coefficients of Beginning Teacher Attrition from Initial School Across Community Type, 1994 to 2002
Problem
Description
+ Teacher Characteristics
+ School Characteristics + Opportunity
Costs
Transfer
vs Stay
Quit
vs Stay
Transfer
vs Stay
Quit
vs Stay
Transfer
vs Stay
Quit
vs Stay
Transfer
vs Stay
Quit
vs Stay
Community Type
Non-Metropolitan Rural
-0 345 -0 364 -0 148 -0 110 -0 314 -0 167 -0 267 -0 156
(0 171)* (0 193)+ (0 172) (0 197) (0 175)+ (0 199) (0 177) (0 200)
Metropolitan Rural -0 059 0 139 -0 026 0 180 -0 058 0 183 -0 057 0 158
(0 063) (0 070)* (0 064) (0 072)* (0 065) (0 072)* (0 066) (0 073)*
Other Urban 0 031 0 285 0 090 0 285 -0 005 0 270 0 012 0 279
(0 087) (0 097)** (0 088) (0 099)** (0 091) (0 109)* (0 091) (0 107)**
Big Four Cities 0 600 0 787 0 559 0 458 0 448 0 404 0 507 0 512
(0 156)** (0 192)** (0 177)** (0 152)** (0 202)* (0 184)* (0 204)* (0 183)**
Time Trend Interacted with Community Type
Non-Metro Rural*TIME
0 537 0 681 0 393 0 517 0 392 0 522 0 389 0 509
(0 192)** (0 207)** (0 193)* (0 212)* (0 193)* (0 213)* (0 193)* (0 212)*
{squared} -0 122 -0 219 -0 092 -0 187 -0 097 -0 192 -0 097 -0 188
(0 055)* (0 057)** (0 055)+ (0 058)** (0 055)+ (0 058)** (0 055)+ (0 058)**
{cubic} 0 008 0 017 0 006 0 015 0 007 0 016 0 007 0 015
(0 004)+ (0 004)** (0 004) (0 004)** (0 004) (0 004)** (0 004) (0 004)**
Metropolitan Rural*TIME
0 054 -0 023 0 046 -0 035 0 038 -0 041 0 034 -0 036
(0 025)* (0 022) (0 025)+ (0 022) (0 025) (0 022)+ (0 025) (0 022)
Other Urban* TIME 0 020 -0 081 0 010 -0 091 0 010 -0 095 0 006 -0 092
(0 032) (0 032)* (0 032) (0 033)** (0 032) (0 034)** (0 032) (0 033)**
Big Four Cities*TIME -0 159 -0 283 -0 186 -0 188 -0 206 -0 206 -0 206 -0 214
(0 101) (0 125)* (0 120) (0 120) (0 120)+ (0 120)+ (0 119)+ (0 118)+
{squared} 0 031 0 027 0 035 0 020 0 037 0 022 0 036 0 023
(0 012)** (0 014)+ (0 013)** (0 015) (0 013)** (0 015) (0 013)** (0 015)
Log Pseudo-Likelihood -37,463 7 -34,997 0 -34,738 1 -34,708 0
Teacher-Year Observations
63,687 62,414 62,398 62,398
Time Trend YES YES YES YES
Teacher Characteristics YES YES YES
Salary YES YES
Non-Wage Job Attributes
YES YES
Opportunity Costs YES
Year Effects YES YES
** p<0.01; * p<0.05; + p<0.10 Note. Robust standard errors appear in parentheses.
39 CEPWC Working Paper Series No. 1. October 2012.
Available at http://curry.virginia.edu/research/centers/cepwc/publications. Curry School of Education | Frank Batten School of Leadership and Public Policy | University of Virginia
TABLE 7 Selected Estimated Coefficients of Rural Beginning Teacher Attrition from Initial School, 1994 to 2002
Problem Description + Teacher
Characteristics + School Characteristics + Opportunity Costs
Transfer vs Stay
Quit vs
Stay
Transfer
vs Stay
Quit vs
Stay Transfer vs Stay
Quit vs
Stay Transfer vs Stay
Quit vs
Stay
Community Amenities
ln(airport) -0 004 -0 088 0 003 -0 098 0 009 -0 089 0 011 -0 077
(0 045) (0 047)+ (0 046) (0 049)* (0 048) (0 051)+ (0 050) (0 052)
ln(hospital) -0 017 -0 020 -0 018 -0 017 0 002 -0 002 -0 007 -0 007
(0 022) (0 025) (0 023) (0 025) (0 023) (0 026) (0 024) (0 027)
ln(teacher education Program)
-0 012 0 038 0 004 0 045 -0 002 0 045 0 000 0 052
(0 031) (0 031) (0 032) (0 033) (0 031) (0 033) (0 031) (0 033)
ln(hometown) 0 166 0 171 0 189 0 175 0 190 0 169 0 192 0 169
(0 015)** (0 018)** (0 015)** (0 019)** (0 015)** (0 019)** (0 015)** (0 019)**
Shopping -0 175 -0 112 -0 173 -0 121 -0 034 -0 047 -0 082 -0 084
(0 057)** (0 061)+ (0 059)** (0 064)+ (0 067) (0 073) (0 080) (0 087)
Socio-economic health -0 039 0 053 -0 054 0 014 -0 089 0 017 -0 138 -0 025
(0 043) (0 046) (0 043) (0 048) (0 045)* (0 050) (0 055)* (0 058)
Fair market rents 0 098 0 205 0 234 0 321 0 978 0 579 1 572 0 794
(0 199) (0 210) (0 205) (0 222) (0 240)** (0 263)* (0 392)** (0 418)+
Log Pseudo-Likelihood -16,704 2 -15932 2 -15,792 8 -15,783 2
Teacher-Year Observations
28,444 28,367 28,367 28,367
Time Trend YES YES YES YES
Teacher Characteristics YES YES YES
Salary YES YES
Non-Wage Job Attributes
YES YES
Opportunity Costs YES
Year Effects YES YES
** p<0.01; * p<0.05; + p<0.10 Note. Robust standard errors appear in parentheses.
42 CEPWC Working Paper Series No. 1. October 2012.
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Map 1. Community Type of Public Schools within New York State
43 CEPWC Working Paper Series No. 1. October 2012.
Available at http://curry.virginia.edu/research/centers/cepwc/publications. Curry School of Education | Frank Batten School of Leadership and Public Policy | University of Virginia
Map 2. Hometowns of Teachers who Grew up in or near New York State, 1994-2002
Map 3. Rural Schools by Distance to Hometown Deciles, 1994 to 2002
44 CEPWC Working Paper Series No. 1. October 2012.
Available at http://curry.virginia.edu/research/centers/cepwc/publications. Curry School of Education | Frank Batten School of Leadership and Public Policy | University of Virginia
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