ECONOMIC ANALYSIS OF DEMAND FOR DISTANCE EDUCATION IN CANADA BY Edward Hans Kofi Acquah, PhD. Senior...
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Transcript of ECONOMIC ANALYSIS OF DEMAND FOR DISTANCE EDUCATION IN CANADA BY Edward Hans Kofi Acquah, PhD. Senior...
ECONOMIC ANALYSIS OF DEMAND FOR DISTANCE EDUCATION IN
CANADA
BY
Edward Hans Kofi Acquah, PhD.
Senior Institutional Analyst & Academic Expert
ATHABASCA UNIVERSITY
CANADA
AIR 2009 ANNUAL FORUMMAY 30-JUNE 03, 2009
ATLANTA, GA. USA.
INTRODUCTION AND BACKGROUND
Distance Education • Has come of age • Become a significant part of postsecondary education
Definitions:
1. “a formal educational process in which the students and the instructor are not in the same place” (Prasad & Lewis, 2008)
Definition implies that instruction may be:• Synchronous: real time or simultaneous• Asynchronous: not real time or simultaneous
And may involve:
INTRODUCTION AND BACKGROUND (continued)
• Communications: through the use of video, audio or by computer and internet technologies, or
• Communications: by written correspondence and use of technologies, e.g. CD-ROM
2. “An educational practice promoting a learning process that brings knowledge closer to the learner” (Deschenes & et all, 1996)
3. Distance Education Courses and Programs
Are classified as ff:• Online Courses/Programs: all instruction is online;
• Hybrid/Blended Online Courses/Programs: combines online and in-class instructions with a reduced in-class seat time for students;
• Other Distance Education Courses/Programs: postal correspondence
RESEARCH OBJECTIVES
• To analyze the demand for distance education in Canada
• To determine which factors influence this demand
• To determine gender differences in terms of the factors that influence the demand
• To determine the policy implications for Canadian universities and colleges offering distance/online education
HISTORICAL PERSPECTIVES
• DE has experienced growth and expansion in North America in recent years in terms of:
• DEMAND: program enrolments and course registrations;
• SUPPLY: Institutions, learning management systems (LMS), delivery modes, faculty, and innovative learning resources;
• In the fall of 2006, 3.5 million students (19.8% of PSE enrolments) in the US took at least one course online;
• The Table below gives a better perspective on growth in DE (Babson Survey Research Group & Sloan Foundation, 2008):
GROWTH IN THE DEMAND FOR DE IN THE US
Period
ENROLMENT DEMAND
Fall 2002 Fall 2006 2006 Increase
PROGRAMS # # #Compound
Annual Growth Rate%
Doctoral/Research 258,489 566,725 308,236 21.7
Master’s 335,703 686,337 350,634 19.6
Baccalaureate 130,677 170,754 40,077 6.9
Community Colleges
806,391 1,904,206 1,097,905 24.0
Specialized Programs
71,710 160,268 88,558 22.3
HISTORICAL PERSPECTIVES (CONTD)
• Parsad & Lewis (2008) have shown that 66% of 1,600 Title IV Degree-granting PSE institutions offered Online, Hybrid/Blended Online or other Distance Education courses in the 2006-07 academic year.
These are the pioneers of DE in Canada:
• The Queen’s University, 1889• University of Saskatchewan, 1907• Xavier University, 1935• The University of British Columbia, 1950• Memorial University of Newfoundland, 1967• University of Waterloo, 1968• Ryerson Polytechnic University, 1970
PIONEERS OF DE IN CANADA
• Simon Fraser University, 1975• University of Victoria, 1979• British Columbia Institute of Technology, 1985• McGill University, 1987• Salt College of Applied Arts & Technology, 1988
• Athabasca University, Canada’s Open University (1973) & • Tele University & Open Learning Institute (1975) were fashioned on
the British Open University (1971) model
• In 1994, there were 200,000 college and university enrolments in DE in Canada (Canadian Studies Directorate, 1994)
• DE enrolments at Athabasca University increased from 10,874 (1994/95) to 12,853 (1997/98), 18.2% or 5.7% per year
PIONEERS OF DE IN CANADA
• Course registrations increased from 20,641 (1994/95) to 25,312 (1997/98), 22.6% or 7.0% per year
-(Athabasca University, 1997/98 Calendar)
Other trends in DE in Canada:• Drop in the average age of distance learners• Increase in registrations and course loads• Increase in the number of female students
Other DE Settings:• In-House training for employees and professional associations, e.g.
Institute of Canadian Bankers, Certified General Accountants of Canada;
• Alberta Distance Education Training Association (ADETA)
FACTORS UNDERLYING DE GROWTH
• Economic growth
• Rising Incomes
• Increasing public expenditures on PSE
• Population Growth
• Geographic separation of linguistic minority groups
• Continuing education needs of populations living far from urban
centres
• Flexibility inherent in DE, e.g. any time anywhere
• Computer and Internet innovations
IMPORTANCE OF DE
• Empirical research has shown that academic achievements of DE learners are comparable to that of on-campus taught face-to-face
• Higher enrolments in DE means economic effectiveness of resource use since DE institutions don’t need additional expenditures like new classrooms in order to expand
Value-added by DE:
• Increasing student access
• Serving rural communities
• Expanding student educational choices
• Ability of DE to transcend geographical boundaries
IMPORTANCE OF DE
• These developments make it all the more imperative to devote time and resources toward research to learn more about the increasing enrolment demand, institutional and general factors fuelling this growth, and the individual characteristics of the students who are being served.
DETERMINANTS OF DE DEMAND
Past research indicates that demand for post-secondary education is influenced by a complex set of factors, including:
• Expected stream of future benefits (Shultz, 1961; Becker, 1964; Bishop, 1977; Campbell and Siegel, 1971; Fiorito and Dauffenbach, 1982; Freeman, 1986; Leslie and Brinkman, 1988; Willis and Rosen, 1979);
• Family income as part of student’s investment capital (Bishop, 1977; Gorman, 1983; Galper and Dunn, 1969; Schwartz, 1986; Spies, 1978)
• Price (Tuition & Fees) (Funk, 1972; Heller, 1997; Campbell and Siegel (1967; Radner and Miller, 1975; Funk, 1984; Ehrenberg, Sherman; and Schwartz, 1986; Leslie and Brinkman, 1987; Jackson and Weathersby, 1975).
• Employment expectations and
• Family background characteristics (Albert, 2008).
• .
DTERMINANTS OF DE DEMAND
However the following determinants have not been explored:
• Number of Programs
• Number of Distance & Online Courses,
• Marketing Expenditures on advertising and recruitment activities,
• The Canadian University Participation Rates (UPR)
ANALYTICAL FRAMEWORK
THE MODEL:• A formal statement of the general model is given as:
• Qdt = f1 (Pt, UPRt, GDPt, MktExpt, #DistCrst, Unempt)
• Where:• Qdt is the demand for distance and online education in year t
• Pt is the real tuition & fees in year t (money tuition deflated by the Consumer Price Index, CPI)
• UPRt is the proportion of the 18-24 year old in post-secondary education in year t in Canada
• GDPt per capita, here represents average household income as well as an indicator of how well the Canadian economy is doing in year t.
• MktExpt is the average expenditure on marketing and recruitment activities in year t
• DistCrst is the number of distance and online courses available in year t.
• Unempt is the unemployment rate in year t in Canada.
THE REGRESSION FUNCTION
To estimate the general model, the following multiple regression version was used:
• Qt = b0 + b1x1t + b2x2t + b3x3t + b4x4t + b5x5t + b6x6t + et
Where:
• Qt = response or dependent variable, i. e. enrolments/registrations in fiscal year t (= 1975/76, 1976/77 …….2007/08)
• b0 = intercept of the regression model, which is the mean value of the response variable when all the predictor variables are zero
• x1t = represents tuition & fees or the price per a 3-credit course paid by students in a fiscal year t deflated by the Consumer Price Index
• x2t = represents the Canada University Participation Rate in fiscal year t
• x3t = represents the effect of the Gross Domestic Product, GDP, that is the state of the economy, on enrolments/registrations in fiscal year t. The GDP may also stand for the role of income in demand for education
THE REGRESSION FUNCTION
• x4t = represents marketing expenditures on advertising and other recruitment activities in fiscal year t
• x5t = represents number of distance education courses available in fiscal year t
• x6t = represents the Canadian unemployment rate in fiscal year t
• et = the stochastic error term in fiscal year t, that is, the effect of potential variables not included here in the model under consideration
• b1, b2, b3, b4, b5, b6 are the coefficients or parameters of the explanatory or predictor variables to be estimated
MODEL ASSUMPTIONS
• The model is based on the following classical linear regression assumptions:
• E (et) = 0 for all t, that is the expected value of the errors is zero for all possible sets of given values of x1, x2, x3, x4, x5 and x6., that is: E |ei| = 0 for i = 1, 2, 3, 4, 5, 6.
• The error term e is independent of each of the m independent variables x1, x2, x3, x4, x5 & x6 i.e. E (xktet) = 0 for all k = 1, 2, 3, 4, ..m
• The errors, e, for all possible sets of given values of x1, x2, x3, x4, x5 & x6 are normally distributed.
• Any two errors ek and ej are independent. Their covariance is zero: E (ekej) = 0 for k ≠ j
• The variance of the errors is finite, and is the same for all given values of x1, x2 ...xm. That is V |ei| = s2 is a constant for I = 1, 2, n
HYPOTHESES
The regression model was estimated using STATA statistical software to test
the following hypotheses :
• That the price (tuition) effect upon demand is negative (b1<0)
• That the UPR effect upon demand is negative (b2<0)
• That the income effect upon demand is positive (b3>0)
• That the marketing effect upon demand is positive (b4>0)
• That the distance courses effect on demand is positive (b5>0)
• That the unemployment effect on demand is negative (b6<0)
ESTIMATED MODELS AND MODEL DIAGNOSTICS
The Macro Perspectives• The following model was estimated at the macro level:
• Qt = b0 + b1x1t + b2x2t + b3x3t + et
The Micro Perspectives• The following model was estimated at the micro level:
• Qt = b0 + b1x1t + b2x2t + b3x3t + b5x5t + et
MODEL DIAGNOSTICS
The estimated models were diagnosed and tested for the presence of: • Autocorrelation (serial correlation: potential values of the residuals follow
a particular pattern): Residual plots & D-W test
• Heteroscedasticity (V (et) = s2 for all j): residual plots against the predicted values of the dependent variable & Brausch-Pagan Test
• Multicollinearity (if independent variables are dependent upon each other or are collinear): Tests: rx1x2 & VIF
Results:• No compelling evidence of a serious presence of any of these data
problems were found
• No strong evidence of model misspecifications were found
ESTIMATED MACRO MODELS
Table 1 Estimated Results of the Macro Enrolment Demand Model (All Students)
VariablesEstimated
CoefficientsStandard
ErrorStandardized Beta (b) t-value Sign p>|t| VIF
Constant (b0) 317,892.5*** 29,703.45 0.000 10.702 0.0000
Tuition & Fees (b1) -3,927.07** 1,262.56 -1.1191 -3.110 0.0077 13.150
Income (GDP) (b2) 85.0738** 21.22 0.6903 4.009 0.0013 3.006#Courses(b3) 109.7501** 32.15 1.0302 3.414 0.0042 9.245Mean Variance Inflation Factor (V. I. F.) 8.467R2 = 0.862
Adjusted R2 = 0.833
Correlation R = 0.929
F-value= 29.19 p-value= 0.0000
D.W.=1.48 *p<0.05; ** p<0.01; ***p<0.001
ESTIMATED RESULTS
Table 2 Estimated Results of the Macro Enrolment Demand Model (Male Students)
VariablesEstimated
CoefficientsStandard
ErrorStandardized Beta (b) t-value Sign p>|t| VIF
Constant (b0) 121,551.44*** 12,186.49 0.000 9.974 0.0000 13.150
Tuition & Fees (b1) -1,466.68** 517.99 -1.2022 -2.831 0.0133 3.006Income (GDP) (b2) 30.59*** 8.71 0.7133 3.513 0.0034 9.245
#Courses(b3) 46.58** 13.19 1.2571 3.531 0.0033 13.150Mean Variance Inflation Factor (V. I. F.) 8.467R2 = 0.808
Adjusted R2 = 0.767
Correlation R = 0.899
F-value= 19.66 p-value= 0.0000
D.W.=1.60 *p<0.05; ** p<0.01; ***p<0.001
ESTIMATED RESULTS
Table 3 Estimated Results of the Macro Enrolment Demand Model (Female Students)
VariablesEstimated
CoefficientsStandard
ErrorStandardized Beta (b)
t-value Sign p>|t| VIF
Constant (b0) 196,900.00 18,060.28 0.000 10.902 3.17E-08 13.150Tuition & Fees (b1) -2,491.04 767.66** -1.0721 -3.245 0.0059 3.006
Income (GDP) (b2) 54.35 12.90*** 0.6663 4.213 0.0009 9.245
#Courses(b3) 64.00 19.55** 0.9072 3.274 0.0055 13.150
Mean Variance Inflation Factor (V. I. F.) 8.467 R2 = 0.884Adjusted R2 = 0.859 Correlation R = 0.940
F-value= 35.47 p-value= 0.0000D.W.=1.39 *p<0.05; ** p<0.01; ***p<0.001
PERFORMANCE OF THE MACRO MODELS
• The macro model provides a reasonably very strong fit to the data: R2 =0.86; 0.81 & 0.88 for All, Male & Female students
• Adjusted-R2 =0.83; 0.77 & 0.86 for All, Male & Female students • The large F-values (significant far beyond 0.001, that is p<0.001) implies
that it is a very strong model• The estimated multiple correlation coefficients R (0.93; 0.89 & 0.94)
indicate very strong correlation• Results are consistent with a priori expectations• The estimated coefficients, b’s, possess the necessary signs and are
statistically significant.• This indicates that the influence of tuition and fees (price), income and
number of courses on enrolment demand are all significant.
ESTIMATED MICRO MODELS
Table 4 Estimated Results of the Micro Demand Model (All Students)
VariablesEstimated
CoefficientsStandard
ErrorStandardized Beta (b) t-value Sign p>|t| VIF
Constant (b0) 808.26 1,308.1489 0.000 0.618 .5418
Tuition & Fees (b1) -4,165.31*** 953.6708 -0.5453 -4.368 .0002 24.178
Income (GDP) (b2) 18.77*** 3.6084 0.7041 5.201 1.78E-05 28.457
#Courses(b3) 29.21** 9.9555 0.5762 2.934 .0068 59.845
MktgExp (b4) 0.0127*** 0.0025 0.2634 4.995 3.09E-05 4.321
Mean Variance Inflation Factor (V. I. F.) 29.2R2 = 0.983
Adjusted R2 = 0.980
Correlation R = 0.991
F-value= 381.40 p-value= 0.0000
D.W.=0.76 *p<0.05; ** p<0.01; ***p<0.001
ESTIMATED MICRO MODELS
Table 5 Estimated Results of the Micro Demand Model (Male Students)
VariablesEstimated
CoefficientsStandard
ErrorStandardized Beta (b) t-value Sign p>|t| VIF
Constant (b0) 671.21 445.39 0.000 1.507 .1434
Tuition & Fees (b1) -1,167.66** 324.70 -0.5472 -3.596 .0013 24.18
Income (GDP) (b2) 5.65*** 1.23 0.7581 4.596 .0001 28.46
#Courses(b3) 7.33* 3.39 0.5173 2.162 .0396 59.85
MktgExp (b4) 0.0036*** 0.00 0.2654 4.127 .0003 4.32
Mean Variance Inflation Factor (V. I. F.) 29.2 R2 = 0.974Adjusted R2 = 0.970
Correlation R = 0.987
F-value= 254.87 p-value= 0.0000
D.W.=0.67 *p<0.05; ** p<0.01; ***p<0.001
ESTIMATED MICRO MODELS
Table 6 Estimated Results of the Micro Demand Model (Female Students)
VariablesEstimated
CoefficientsStandard
ErrorStandardized Beta (b) t-value Sign p>|t| VIF
Constant (b0) -481.88 -481.88 0.000 -0.722 0.4766
Tuition & Fees (b1) -1,984.30*** -1,984.30 -0.4342 -4.077 0.0000 24.18
Income (GDP) (b2) 14.99*** 14.99 0.9401 8.142 0.0000 28.46
#Courses(b3) 4.89 4.89 0.1614 0.963 0.3443 59.85
MktgExp (b4) 0.0098*** 0.01 0.3383 7.519 0.0000 4.32
Mean Variance Inflation Factor (V. I. F.) 29.2 R2 = 0.987Adjusted R2 = 0.985
Correlation R = 0.994
F-value= 526.64 p-value= 0.0000
D.W.= 1.03 *P<0.05; ** p<0.01; ***p<0.001
ANALYSIS OF RESULTS AND POLICY IMPLICATIONS
Introduction• The estimated results are consistent with all our hypotheses• The estimated coefficients, b’s, possess the necessary signs and are
statistically significant.
This indicates that the influences of:• Price (Tuition and Fees)
• Income (GDP)
• Number of Courses
• Marketing Expenditures on advertising and recruitment
on enrolment demand are generally all significant.
ANALYSIS OF RESULTS AND POLICY IMPLICATIONS
PRICE (Tuition & Fees)• The impact of price on demand for DE is negative and statistically
significant in both models;• When price rises, demand for DE declines, all other thins remaining
constant• Price is the second most important predictor of demand by male students
(b=1.202: macro) & second most important predictor of DE (b=0.547: micro),
• Price is the second most important predictor of demand by female students (b=1.072: macro) & second most important predictor of DE (b=0.434: micro)
• This means that price changes are of greater concern to male students than to female students at Canadian distance institutions in general and the typical distance institution in particular.
• Increases in price result in the loss of more male enrolments than female enrolments for DE.
• These results confirm the economic hypothesis that demand for education is inversely related to price (Jackson & Weathersby, 1975; Bishop, 1977; Funk, 1972; Corman, 1983).
ANALYSIS OF RESULTS AND POLICY IMPLICATIONS
INCOME (GDP)• Income has positive effect on demand for DE (Mueller & Rockerbie, 2005)• It is statistically significant for Canada (macro models) and for the typical
distance education institution in Canada (micro models).• Income is the third most important predictor of demand by male students
(b=0.713: macro) and first most important predictor of demand by male students (b=0.758: micro)
• Income is the third most important predictor of demand by female students (b=0.666: macro) but the first most important predictor of demand by female students (b=0.940: micro)
• The influence of income on demand for DE is greater for male students than for female students in Canada in general, but greater for female students than male students in the typical institution
• This means that increase in income attracts more demand from female students than from male students in the typical institution.
ANALYSIS OF RESULTS AND POLICY IMPLICATIONS
MARKEING EXPENDITURE
• The marketing expenditure variable has a positive effect on demand for distance education and is statistically significant
• This means that the more we spend on advertising and other recruitment activities, the more students will enrol at a typical distance education university
• Thus a $1.00 increase in marketing expenditures will lead to 0.0127 new enrolments; $10,000 increase will lead to 127 new enrolments; and a $100,000 increase will lead to 1,270 new enrolments.
• Marketing and recruitment expenditures are more important to female students (b=0.338) than to male students (b=0.265) as exemplified by the estimated standardized beta coefficients
• This means that any dollar amount spent on marketing and recruitment attracts more female enrolments than male enrolments.
ANALYSIS OF RESULTS AND POLICY IMPLICATIONS
NUMBER OF COURSES• The estimated course coefficients for both macro and micro models are
consistent with the a priori expectations and are statistically significant• The availability of distance and online courses appear more important to
male students than female students • The availability of courses is the first most important predictor of demand
by male students (b=1.257: macro) but the third most important predictor of demand by male students (0.517) in the micro model
• Availability of courses is the second most important predictor of demand by female students (b=0.907) in the macro model, but the fourth most important predictor of demand by female students (b=0.161) in the micro model
• This means that increase in the availability of distance and online courses attract greater demand for distance education from male students than from female students
SUMMARY AND CONCLUSIONS
• The overall results are illuminating and offer some interesting implications for enrolment demand for distance education in Canada.
• The impact of tuition and fees (price) on demand for distance education is negative and statistically significant, confirming the economic hypothesis that demand is inversely related to price.
• Price changes are of greater concern to male students than to female students at Canadian distance institutions, implying that increases in the price of distance education would result in more male enrolment losses than female losses
• The impact of income on the demand for distance education is greater for male students than for female students in Canada in general.
• However, in a typical distance education institution, the impact of income on demand for distance education is greater for female students than for male students
• This suggests that increase in income would attract more demand from female students than from male students.
SUMMARY AND CONCLUSIONS• At the typical distance university, marketing and recruitment expenditures
are more important to female students than to male students• This means that any dollar amount spent on marketing and recruitment
would attract more female enrolments than male enrolments• Availability of distance and online courses appear to be more important to
male students than to female students. • Increased availability of courses would attract greater male demand for
distance education than female demand• The overall importance of the study is its ability to provide a theoretical
and empirical framework for the analysis of demand for distance education at both national and institutional levels.
THE END
THANK YOU