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A Quarter Century on, Where are we?

A Quarter Century on, Where are we?. Tom Stanley, Hendrix College.

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A Quarter Century on, Where are we?

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  1. A Quarter Century on, Where are we? Tom Stanley, Hendrix College (MRA) is at once a framework in which to organize and interpret exact and inexact replications, to review more objectively the literature and explain its disparities, and to engage in the self-analysis of investigating the socioeconomic phenomenon of social scientific research itself– Stanley & Jarrell (1989, p. 168). T.D. Stanley, Hendrix College MAER-Net September 12, 2014 Stanley, T.D. and S.B. Jarrell (1989) Meta-regression analysis: A quantitative method of literature surveys. Journal of Economic Surveys, 3: 161-70

  2. Where are we going? Exponential @ 18%/year

  3. Has MRA’s promise been realized? • More objective reviews of economic research • Explanation of disparate research findings • Investigation of the socio-economics of economics research? T.D. Stanley, Hendrix College MAER-Net September 12, 2014

  4. Investigation of the socio-economics of economics research? • Female economists find less wage discrimination against women than do male researchers (S&J, 1998; J&S, 2004, Weichselbaumer & Winter-Ebmer, 2005) • Publication bias is the result of professional incentives and the pressure to publish. • Researcher ideology affects reported results (Doucouliagos and Paldam, 2006). • The Research Cycle: Reported findings generally confirm a novel hypothesis; later, the incentive for rejection increases (S, J & D, 2008). T.D. Stanley, Hendrix College MAER-Net September 12, 2014

  5. Has MRA’s promise been realized? • More objective reviews of economic research • Explanation of disparate research findings • Investigation of the socio-economics of economics research, . . . but much more to do. • Framework to organize and interpret exact and inexact replications? T.D. Stanley, Hendrix College MAER-Net September 12, 2014

  6. Framework to organize and interpret exact and inexact replications? • Deakin University’s (Chris Doucouliagos) meta-data repository. • Bob Reed, Maren Duvendack, and others have expressed interest in organizing something more formal. • Piers Steel and metaBUS. • Needless to say, . . . . T.D. Stanley, Hendrix College MAER-Net September 12, 2014

  7. How about S&J’s (1989) exact MRA model? Does anyone still use it? bi = b + SbkZik +ei(3) Where: “biis the reported estimate of b from the ith study. . . Zik the meta-independent variable which measures relevant characteristics of an empirical study andexplains its systematic variation” (p. 164) • Zikmight include: • Dummy variables for omitted variables. • Specification variables • Sample Size • Author characteristics • Data characteristics T.D. Stanley, Hendrix College MAER-Net September 12, 2014

  8. Due to obvious Heteroskedasticity, S&J 89 recommended the WLS version of (3): ti= bi/Sbi = b (1/Sbi) + Sbk (Zik/Sbi) +ei/Sbi(4) • t-value, ti, is the dependent variable and precision(1/Sbi) is an independent variable. • WLS is neither fixed- nor random-effects,in practical application, WLS is better than both (Stanley and Doucouliagos, 2013a&b, Deakin SWP). • We never wanted to use fixed- or random-effects, in spite of citing Hedges and Olkin (1985). • Had we included the intercept, we would have fully anticipated current practice {FAT-PET-MRA}. T.D. Stanley, Hendrix College MAER-Net September 12, 2014

  9. Neither Fixed • Fixed-effect MRA: same as our WLS regression, but divides SEs by square root of MSE (H&O, 85) • causes SEs & CIs to be too small & too narrow. • assumes that policy makers wish to make inferences to a population that is identical,in every respect, to past research. Like that happens! • So why divide by root MSE??? • WLS already correct the SEs for both excess heterogeneity and heteroskedasticity • Fixed-effect MRA is never relevant in economics. T.D. Stanley, He n drix College MAER-Net September 12, 2014

  10. Nor Random • Random-effects MRAadds a second error term, ni , to the conventional meta-regression model, bi = b + SbkZik+ni+ ei(1) Where niis assumed to be normal and independent of the sampling errors, ei, and the moderators, Zik. • Problems: • In economics, excess heterogeneity is systematic! • Typically, ni will be the result of omitting relevant variables; thus, it introduces bias. • In the 1980s, we saw no reason to use FE or RE • Now, we know that we should never use FE or RE! T.D. Stanley, Hendrix College MAER-Net September 12, 2014

  11. Problems and Issues—2014 Multiple Meta-Regression (MRA) • Should we divide meta-regression SEs by the square root of MSE? No! (Hedges and Olkin, 1985) • Does Random-Effects MRA become biased with publication bias? YES!(Stanley and Doucouliagos, 2013b) Meta-analysis (MA)—Weighted Averages • Fixed-Effects Estimator (FEE): confidence intervals are too narrow if there is heterogeneity. • Random-Effects Estimator (REE): can be very biased with publication bias {already widely established} T.D. Stanley, Hendrix College MAER-Net September 12, 2014

  12. Neither Fixed nor Random ̶ 2014 • In two recent simulation papers, Chris and I show: • WLS is as good as Fixed or Random-Effects under the best conditions for FE and RE. • If we are making inferences to policy settings or to future research, WLS is much better than FE. • When there is publication bias, WLS is much better than RE. • Worse still: all tests of either heterogeneity or publication bias are known have low power. • Therefore, in practice, we should never use either FE or RE. . . . Never! T.D. Stanley, Hendrix College MAER-Net September 12, 2014

  13. Our two working papers: Stanley, T.D., Doucouliagos H(C). 2013a. Neither Fixed nor Random: Weighted least squares meta-regression analysis. SWP, Economics Series 2013-1, Deakin University. http://www.deakin.edu.au/buslaw/aef/workingpapers/papers/2013_1.pdf Stanley, T.D., Doucouliagos H(C). 2013b. Better than Random: Weighted least squares meta-regression analysis. SWP, Economics Series 2013-2, Deakin University. http://www.deakin.edu.au/buslaw/aef/workingpapers/papers/2013_2.pdf T.D. Stanley, Hendrix College MAER-Net September 12, 2014

  14. Weighted Least Squares (WLS-MRA) • MRAs should never be estimated by OLS, because there is much variation among the reported SEs of bi or effecti • Enter WLS: =(MtW-1M)-1MtW-1b (2) Where: = T.D. Stanley, Hendrix College MAER-Net September 12, 2014

  15. The Gauss-Markov Theorem{Proportional Heterogeneity Invariance} • As long asWin (2) is known up to some unknown proportion, s2, WLS{ } is the Best {Minimum Variance} Linear Unbiased Est. • Invariance to proportional excess heterogeneity is a robustness property of the Gauss-Markov Theorem and WLS. • It is not an assumption. T.D. Stanley, Hendrix College SRSM July 2, 2014

  16. Traditional, Unrestricted WLS replaces with: = (5) and is estimated by the WLS residuals, automatically T.D. Stanley, Hendrix College SRSM July 2, 2014

  17. Simulation Design • Generate Yjand estimate bfrom: Yj= 100 + b X1j+a2X2j+a3i X3j+ ej(6) • Half the studies omit the relevant variable X2i • a3i~N(0, ) adds excess random heterogeneity by always omitting relevant variable X3i • When b= 1, r between Y and X1 is .27 • n= {62, 125, 250, 500, 1000} in primary regressions • X1j , X2j, X3j are generated randomly, but X2j & X3j are forced to be correlated with X1j . • Fixed- or random-effects model is always true. T.D. Stanley, Hendrix College MAER-Net September 12, 2014

  18. Simulation Design—Cont. • Experiment 1: 10,000 WLS, RE and FE-MRAs are calculated with one moderator variable, Mi= {0,1}, reflecting whether the original study omitted X2i, or not, (Tables 1 & 2) bi = b0+ b1Mi+ ui(7) Where: bi is the ith primary study’s estimate of b • Experiment 2: Experiment 1 plus 50% of the studies select statistically significant results, and either MRA (7), above, or a multiple FAT-PET-MRAis used. (Tables 3 & 4) bi = b0+ b1Mi+ b2SEi + ui (8) T.D. Stanley, Hendrix College MAER-Net September 12, 2014

  19. Table 1: Coverage Percentages T.D. Stanley, Hendrix College MAER-Net September 12, 2014

  20. Table 2: Bias and MSE T.D. Stanley, Hendrix College MAER-Net September 12, 2014

  21. Simulation Results I:“A house divided by itself cannot stand”—A. Lincoln • FE-MRA: unacceptableSEs in most actual applications. Thus, Do Not Divide by root MSE! • When there is no heterogeneity and FE-MRA is true, WLS-MRA is equivalent to FE-MRA. • RE-MRA: When RE-MRA’s model is true, WLS-MRAprovides acceptable and comparable coverage, and its bias and MSE are a bit better. • Irony:WLS-MRA dominates RE-MRA in those exact circumstances for which RE-MRA is designed— large additive, excess random heterogeneity T.D. Stanley, Hendrix College MAER-Net September 12, 2014

  22. Table 3: Bias and MSE with 50% Publication Bias T.D. Stanley, Hendrix College MAER-Net September 12, 2014

  23. Table 4: Bias, MSE (50% Pub’bias) FAT-PET-MRA T.D. Stanley, Hendrix College MAER-Net September 12, 2014

  24. Simulation Results IIWhen there is publication bias: • WLS-MRA dominates RE-MRA. • WLS-MRA always has less bias and, on average, substantially lower MSE • Irony:WLS dominates RE in those exact circumstances for which RE-MRA is designed. • When RE is better, it is not much better, and those cases cannot be identified, in practice. • Thus, there is No Reason to use Random-Effects Meta-Regression. . . . . . Ever! T.D. Stanley, Hendrix College MAER-Net September 12, 2014

  25. Why WLS works so well when there is high heterogeneity? For very large heterogeneity, the random heterogeneity term, , will dominate sampling error, , and its variation, making the overall variance of the estimate, , roughly proportional to .

  26. Unlike S & J, S & J’s MRA ModelStill works after all these Years Multiple MRA • Should we divide MRA SEs by √MSE? Never! • Is RE-MRA biased with publication bias? Yes! • WLS-MRA dominates RE-MRA with or without Correcting for Publication Bias. • WLS also dominates REE and FEE weighted averages when combining Cohen’s d from RCTs. T.D. Stanley, Hendrix College MAER-Net September 12, 2014

  27. The Task Ahead • We need more realistic simulation studies • Alternative modeling strategies {general-to-specific; Bayesian modeling} • Unbalanced panel MRA models. • We need to continue to raise the quality of MRA applications, making them more robust, comprehensive and rigorous. • Wish us luck at ASSA in Boston. T.D. Stanley, Hendrix College MAER-Net September 12, 2014

  28. Thank You!

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