Latent Class Analysis of Rotation Group Bias: The Case of Unemployment

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Paul Biemer, UNC and RTI Bac Tran, US Census Bureau Jane Zavisca, University of Arizona SAMSI Conference, 11/10/2005 Latent Class Analysis of Rotation Group Bias: The Case of Unemployment

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Latent Class Analysis of Rotation Group Bias: The Case of Unemployment. Paul Biemer, UNC and RTI Bac Tran, US Census Bureau Jane Zavisca, University of Arizona SAMSI Conference, 11/10/2005. Overview. Motivation : To understand measurement error in the official unemployment rate - PowerPoint PPT Presentation

Transcript of Latent Class Analysis of Rotation Group Bias: The Case of Unemployment

Page 1: Latent Class Analysis of Rotation Group Bias: The Case of Unemployment

Paul Biemer, UNC and RTI

Bac Tran, US Census Bureau

Jane Zavisca, University of Arizona

SAMSI Conference, 11/10/2005

Latent Class Analysis of Rotation Group Bias: The Case of Unemployment

Page 2: Latent Class Analysis of Rotation Group Bias: The Case of Unemployment

Overview

Motivation: To understand measurement error in the official unemployment rate

Method: Latent Class Analysis: measurement error as classification error

Distinction from previous research: Focus on measurement error mechanisms, as opposed to correcting marginal estimates.

Ultimate goal: To improve survey design.

Page 3: Latent Class Analysis of Rotation Group Bias: The Case of Unemployment

The Official Unemployment Rate

In LaborForce {

Source: The Current Population Survey, 2004

Employed 62.4%Unemployed 3.6%Not in Labor Force 34.0%

Employed 94.5%Unemployed 5.5%

Employment Status

Unemployment Rate

Page 4: Latent Class Analysis of Rotation Group Bias: The Case of Unemployment

The Official Unemployment Rate

Categories Employed: worked at least one hour in previous

week, or temporarily absent from job. Unemployed: not employed and “actively” looking

for work (unprompted categories), or temporarily laid off.

Not in Labor Force (NILF): All others.

Page 5: Latent Class Analysis of Rotation Group Bias: The Case of Unemployment

Evidence for Measurement Error in Labor Force Status (LFS) in the CPS 1. Re-interview inconsistency

2. Rotation group bias

Page 6: Latent Class Analysis of Rotation Group Bias: The Case of Unemployment

Re-interview Inconsistency

1% random sample of original sample of ≈ 50,000 households is re-interviewed monthly (without replacement).

Re-interview occurs in same week as the original interview.

Inconsistent responses suggest measurement error.

Page 7: Latent Class Analysis of Rotation Group Bias: The Case of Unemployment

Re-interview Inconsistency (2001-2003)

8.9% of cases are inconsistently classified.

First Interview Empl. Unempl. NILF AllEmpl. 58.2 0.4 4.2 62.7Unempl. 0.5 1.9 1.0 3.4NILF 2.0 0.8 31.0 33.9All 60.7 3.1 36.2 100.0

Reinterview

Page 8: Latent Class Analysis of Rotation Group Bias: The Case of Unemployment

Unemployment Inconsistency (2001-2003)

First Interview Empl. Unempl. NILF AllEmpl. 92.6 0.6 6.7 100Unempl. 13.8 56.4 29.8 100NILF 6.0 2.4 91.6 100

Reinterview

Page 9: Latent Class Analysis of Rotation Group Bias: The Case of Unemployment

Rotation Group Design

BEGINDATE J F M A M J J A S O N D J F M A M J J

Oct-01 8Nov-01 7 8Dec-01 6 7 8Jan-02 5 6 7 8Feb-02 5 6 7 8Mar-02 5 6 7 8Apr-02 5 6 7 8May-02 5 6 7 8Jun-02 5 6 7 8Jul-02 5 6 7 8

Aug-02 5 6 7 8Sep-02 5 6 7 8Oct-02 4 5 6 7 8Nov-02 3 4 5 6 7 8Dec-02 2 3 4 5 6 7 8Jan-03 1 2 3 4 5 6 7 8Feb-03 1 2 3 4 5 6 7 8Mar-03 1 2 3 4 5 6 7 8Apr-03 1 2 3 4 5 6 7 8

2003 2004SAMPLE MONTH

Page 10: Latent Class Analysis of Rotation Group Bias: The Case of Unemployment

Rotation Group Bias (2002 Full CPS)

5

5.5

6

6.5

7

1 2 3 4 5 6 7 8

Month-in-Sample

Un

em

plo

ym

en

t R

ate

Page 11: Latent Class Analysis of Rotation Group Bias: The Case of Unemployment

What Could Cause Rotation Group Bias? Non-response bias: rotation groups may

represent different populations. Differences in interview setting

telephone vs. face-to-face proxy vs. self

Time in sample effect Improved understanding of questionnaire Embarrassment at admitting prolonged

unemployment Interview changes behavior

Page 12: Latent Class Analysis of Rotation Group Bias: The Case of Unemployment

Latent Class Analysis to Test Hypotheses Sources of Rotation Group Bias

Non-response bias (different populations): Does latent employment status vary by rotation group?

Measurement error: Does rotation group influence error rates?

Differences in setting: Does interview mode (telephone vs. face-to-face) initial

interview influence error rates? Does interview mode account for apparent rotation group

effects on error rates? Social pressure:

Gender influences latent employment status Does gender also influence error rates? Does the effect of rotation group vary by gender?

Page 13: Latent Class Analysis of Rotation Group Bias: The Case of Unemployment

Correlation between Month-in-Sample and Interview Mode

20

88

40

88

80

12

60

12

1 2 - 4 5 6 - 8Month in Sample

In Person

By Phone

Page 14: Latent Class Analysis of Rotation Group Bias: The Case of Unemployment

Re-interview Data Set N = 24,297 (un-weighted data) X = True Labor Force Status (Latent Variable) A = Observed Labor Force Status at Inititial

Interview B = Observed Labor Force Status as Time 2

(Reinterview)

Page 15: Latent Class Analysis of Rotation Group Bias: The Case of Unemployment

Basic Latent Class Model

XA

B

XBjt

XAit

Xt

ABXijt

|| BXjt

AXit

Bj

Ai

Xt

ABXijtf )ln(

X, A|X, B|X Shorthand:

(with usual constraints for identifiability)

Page 16: Latent Class Analysis of Rotation Group Bias: The Case of Unemployment

Grouping Variable

XBjt

XAit

SXts

Ss

ABXSijts

|||

X

A

B

S, X|S, A|X, B|X

S

BXjt

AXit

XSts

Bj

Ai

Xt

Ss

ABXSijtsf )ln(

Page 17: Latent Class Analysis of Rotation Group Bias: The Case of Unemployment

External Variable influencing Classification Error

XMBjtm

XMAitm

SXts

SMs

ABXSMijtsm

|||

XA

B

SM, X|S, A|XM , B|XM

S M

BXMjtm

AXMitm

BMjm

AMim

BXjt

AXit

XSts

SMts

Bj

Ai

Xt

Mm

Ss

ABXSMijtsf

)ln(

Page 18: Latent Class Analysis of Rotation Group Bias: The Case of Unemployment

Grouping versus External Variables

XA

B

SM, X|S, A|XMS {AXM AXS} , B|XMS {BXM BXS}

S M

Page 19: Latent Class Analysis of Rotation Group Bias: The Case of Unemployment

Covariates

S = Gender Men: 47% Women: 52%

M = Month in Sample 1 or 5: 28% 2-4, 6-8: 72%

T = Interview Mode (Initial Interview) Telephone: 72% In Person: 18%

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Statistical Power & Identifiability IssuesFirst

Interview Empl. Unempl. NILF AllEmpl. 13939 87 1007 15033Unempl. 113 459 249 821NILF 500 204 7739 8443All 14552 750 8995 24297

Reinterview

• Large total N, but relatively small N for unemployed.•More variables means more identifiable models, but also diminishing cell counts and boundary solutions.

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Principles of Model Construction Always include X|S A|X B|X

Assume 3 latent classes & S as grouping variable Fit classification table of A*B*M*T*S.

Vary following effects M as grouping variable M &/or T affecting classification error for A & B T affecting A but not B S affecting A & B when identifiable based on other

restrictions (including interaction of M & S)

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Principles of Model Construction Try equality constraints

Equal influence of M & or S on error rate for A & B.

Error rate for T at time A = error rate at time B (when T does not affect B).

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Principles of Model Selection Limit search to theoretically plausible models. Limit search to identifiable models. Overall model fit

P-value of likelihood ratio test vs. saturated model > .01 Dissimilarity index < .05

Model selection among those meeting above criteria: Bayesian information criterion (BIC) Likelihood ratio test for nested models

Check substantive interpretation within set of possible best models.

Page 24: Latent Class Analysis of Rotation Group Bias: The Case of Unemployment

Best-Fitting Models

Model Group Effects on

Classification df L2 pval BIC dissim1 X|S A|XM; A|XT; B|XM;

B|XT24 38.0 0.04 -204 0.007

2 X|S X|M A|XM; A|XT; B|XM; B|XT

22 37.0 0.02 -184 0.007

3 X|S A|XMS=B|XMS; A|XT; B|XT

20 25.4 0.20 -176 0.006

4 X|S X|M A|XMS=B|XMS; A|XT; B|XT

18 20.2 0.32 -161 0.005

5 X|S A|XM, A|XT, A|XS B|XM, B|XT B|XS

12 12.5 0.41 -108 0.005

6 X|S X|M A|XM, A|XT, A|XS B|XM, B|XT B|XS

10 7.6 0.67 -93 0.004

Page 25: Latent Class Analysis of Rotation Group Bias: The Case of Unemployment

Estimated Unemployment Rate Model 1 (similar to other top models)

UE = 4.9% Observed M.I.S. 1 & 5

UE = 6.0% Observed M.I.S. 2-4, 6-8

UE = 4.7%

Page 26: Latent Class Analysis of Rotation Group Bias: The Case of Unemployment

Conditional Probabilities for Employment Status

Latent Observed Biemer Tran State State A B 1997 1999

E 96.8 95.5 98.7 98.7U 0.3 0.0 0.4 0.4N 2.9 4.5 0.8 0.9E 13.7 11.1 8.6 9.8U 77.3 74.1 74.4 72.3N 9.0 14.8 17.0 17.9E 4.2 1.7 1.1 2.3U 2.0 1.9 0.9 1.5N 93.8 97.0 98.0 96.2

Model 1Current Estimates Previous EstimatesClassification

E

N

U

Page 27: Latent Class Analysis of Rotation Group Bias: The Case of Unemployment

Conditional Probabilities for A|TX & B|TX

Latent ObservedState State Phone Visit Phone Visit

E 97.3% 96.7% 96.9% 95.9%U 0.3% 0.4% 0.0% 0.0%N 2.5% 2.9% 3.1% 4.1%E 12.5% 9.5% 0.0% 0.0%U 61.0% 75.6% 83.6% 82.1%N 26.4% 14.8% 16.4% 17.9%E 4.1% 6.3% 5.3% 5.3%U 0.1% 2.0% 1.3% 2.4%N 95.8% 91.7% 93.4% 92.3%

Interview

E

ReinterviewConditional ProbabilitiesClassification

U

N

Page 28: Latent Class Analysis of Rotation Group Bias: The Case of Unemployment

Conditional Probabilities for A|MX & B|MX

Latent State

Observed State

MIS 1,5

MIS 2-4,6-8

MIS 1,5

MIS 2-4,6-8

E 97.7% 98.8% 96.0% 96.7%U 0.8% 0.6% 0.1% 0.0%N 1.5% 0.6% 3.8% 3.3%E 8.2% 14.6% 3.0% 1.6%U 83.3% 71.8% 87.3% 79.6%N 8.5% 13.6% 9.7% 18.8%E 7.7% 5.4% 3.1% 5.2%U 2.8% 1.5% 2.3% 1.2%N 89.5% 93.1% 94.6% 93.6%

U

N

ClassificationConditional Probabilities

Interview Reinterview

E

Page 29: Latent Class Analysis of Rotation Group Bias: The Case of Unemployment

Summary Findings Change in structural model (treating month-in-

sample as grouping variable) does not change the preferred measurement model.

Models fit nearly as well without M as grouping variable; casts doubt on non-response bias hypothesis.

M-I-S bias is not just a function of interview mode. Covariate effects (esp. S) on response error should

be examined further in model with more df; need another grouping variable.

Page 30: Latent Class Analysis of Rotation Group Bias: The Case of Unemployment

Unresolved Issues Ambiguous results for model selection Most interested in fit of unemployment

classification, but this is overwhelmed in measures of overall fit

Software limitations: clustering, local & boundary solutions, standard errors not consistently output

Page 31: Latent Class Analysis of Rotation Group Bias: The Case of Unemployment

Future Research Agenda Try finer coding of month-in-sample Develop models for other variables: age, race,

proxy vs. self Pool more years of data Develop hypotheses & interpretation based on

review of: experimental work analyses of non-response related models including Markov latent class models

of employment status transitions

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Rotation Group Bias (2001-2003, reinterview data)

0%

1%

2%

3%

4%

5%

6%

7%

1 2 3 4 5 6 7 8

Month-in-Sample

Un

emp

loym

ent

Rat

e