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Guidelines for Multiple Testing in Impact Evaluations Peter Z. Schochet

Guidelines for Multiple Testing in Impact Evaluations Peter Z. Schochet. June 2008. What Is the Problem?. Multiple hypothesis tests are often conducted in impact studies Outcomes Subgroups Treatment groups Standard testing methods could yield: Spurious significant impacts

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Guidelines for Multiple Testing in Impact Evaluations Peter Z. Schochet

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  1. Guidelines for Multiple Testing in Impact EvaluationsPeter Z. Schochet June 2008

  2. What Is the Problem? • Multiple hypothesis tests are often conducted in impact studies • Outcomes • Subgroups • Treatment groups • Standard testing methods could yield: • Spurious significant impacts • Incorrect policy conclusions 2

  3. Overview of Presentation • Background • Suggested testing guidelines 3

  4. Background

  5. Assume a Classical Hypothesis Testing Framework • True impacts are fixed for the study population • Test H0j: Impactj = 0 • Reject H0j if p-value of t-test < =.05 • Chance of finding a spurious impact is 5 percent for each test alone 5

  6. But If Tests Are Considered Together and No True Impacts… Probability 1 t-test Number of TestsaIs Statistically Significant 1 .05 5 .23 10 .40 20 .64 50 .92 aAssumes independent tests 6

  7. Impact Findings Can Be Misrepresented • Publishing bias • A focus on “stars” 7

  8. Adjustment Procedures Lower Levels for Individual Tests • Methods control the “combined” error rate • Many available methods: • Bonferroni: Compare p-values to (.05 / # of tests) • Fisher’s LSD, Holm (1979), Sidak (1967), Scheffe (1959), Hochberg (1988), Rom (1990), Tukey (1953) • Resampling methods (Westfall and Young 1993) • Benjamini-Hochberg (1995) 8

  9. These Methods Reduce Statistical Power: The Chances of Finding RealEffects Simulated Statistical Powera Number of Tests UnadjustedBonferroni 5 .80 .59 10 .80 .50 20 .80 .41 50 .80 .31 a Assumes 1,000 treatments and 1,000 controls, 20 percent of all null hypotheses are true, and independent tests 9

  10. Big Debate on Whether To Use Adjustment Procedures • What is the proper balance between Type I and Type II errors? 10

  11. To Adjust or Not To Adjust?

  12. February, July, December 2007 Advisory Panel Meetings Held at IES Participants: Steve Bell, Abt Howard Bloom, MDRC John Burghardt, MPR Mark Dynarski, MPR Andrew Gelman, Columbia David Judkins, Westat Jeff Kling, Brookings David Myers, AIR Larry Orr, Abt Peter Schochet, MPR Chairs: Phoebe Cottingham, IES Rob Hollister, Swarthmore Rebecca Maynard, U. of PA 12

  13. Views Expressed Here May Not Represent Those of allPanel Members

  14. Basic Testing Principles

  15. The Problem Should Not Be Ignored • Erroneous conclusions can result otherwise • But need to balance Type I and II errors 15

  16. Limiting the Number of Outcomes and Subgroups Can Help • But not always possible or desirable • Need flexible strategy for confirmatory and exploratory analyses 16

  17. Problem Should Be Addressed by First Structuring the Data • Structure will depend on the research questions • Adjustments should not be conducted blindly across all contrasts 17

  18. Suggested Testing Guidelines

  19. The Plan Must Be Specified Up Front • Study protocols should specify: • Data structure • Confirmatory analyses • Testing strategy 19

  20. Delineate Separate Outcome Domains • Based on a conceptual framework • Represent key clusters of constructs • Domain “items” are likely to measure the same underlying trait (have high correlations) • Test scores • Teacher practices • School attendance 20

  21. Testing Strategy: Both Confirmatory and Exploratory Components • Confirmatory component • Addresses central study hypotheses • Must adjust for multiple comparisons • Exploratory component • Identify impacts or relationships for future study • Findings should be regarded as preliminary 21

  22. Confirmatory Analysis Has Two Potential Parts • Domain-specific analysis • Between-domain analysis 22

  23. Domain-Specific Analysis

  24. Test Impacts for Outcomes as a Group • Create a composite domain outcome • Weighted average of standardized outcomes • Equal weights • Expert judgment • Predictive validity weights • Factor analysis weights • MANOVA not recommended • Conduct a t-test on the composite 24

  25. What About Tests for Individual Domain Outcomes? • If impact on composite is significant • Test impacts for individual domain outcomes without multiplicity corrections • Use only for interpretation • If impact on composite is not significant • Further tests are not warranted 25

  26. Between-Domain Analysis

  27. Applicable If Studies Require Summative Evidence of Impacts • Constructing “unified” composites may not make sense • Domains are likely to measure different latent traits • Test domain composites individually using adjustment procedures 27

  28. Testing Strategy Will Depend on the Research Questions • Are impacts significant in all domains? • No adjustments are needed • Are impacts significant in anydomain? • Adjustments are needed 28

  29. Other Situations That Require Multiplicity Corrections

  30. Designs With Multiple Treatment Groups • Need stringent evidence to conclude that some treatments are preferred over others • Apply Tukey-Kramer, Dunnett, Orthogonal Contrasts or resampling methods to domain composites 30

  31. Subgroup Analyses That Are Part of the Confirmatory Analysis • Limit to a few educationally meaningful subgroups • Justify subgroups • Stratify by subgroup in sampling • Conduct F-tests fordifferences across subgroup impacts 31

  32. Exploratory Analyses? • Two schools of thought • The use of corrections does not make exploratory findings confirmatory 32

  33. Statistical Power • Studies must be designed to have sufficient statistical power for all confirmatory analyses • Includes subgroup analyses 33

  34. Reporting • Qualify confirmatory and exploratory analysis findings in reports • No one way to present adjusted and unadjusted p-values • Confidence intervals could be helpful • Confirmatory analysis results should be emphasized in the executive summary 34

  35. Testing Approach Summary • Specify plan in study protocols • Structure the data • Delineate outcome domains • Confirmatory analysis • Within and between domains • Exploratory analysis • Qualify findings appropriately 35

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