Abstract

The current crisis in scientific psychology about whether our findings are irreproducible was presaged years ago by Tversky and Kahneman (1971), who noted that even sophisticated researchers believe in the fallacious Law of Small Numbers—erroneous intuitions about how imprecisely sample data reflect population phenomena. Combined with the low power of most current work, this often leads to the use of misleading criteria about whether an effect has replicated. Rosenthal (1990) suggested more appropriate criteria, here labeled the continuously cumulating meta-analytic (CCMA) approach. For example, a CCMA analysis on a replication attempt that does not reach significance might nonetheless provide more, not less, evidence that the effect is real. Alternatively, measures of heterogeneity might show that two studies that differ in whether they are significant might have only trivially different effect sizes. We present a nontechnical introduction to the CCMA framework (referencing relevant software), and then explain how it can be used to address aspects of replicability or more generally to assess quantitative evidence from numerous studies. We then present some examples and simulation results using the CCMA approach that show how the combination of evidence can yield improved results over the consideration of single studies.

Keywords

Meta-analysisPsychologyReplication (statistics)Sample size determinationCognitive psychologyComputer scienceSample (material)EpistemologyEconometricsStatisticsMathematicsPhilosophy

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Publication Info

Year
2014
Type
article
Volume
9
Issue
3
Pages
333-342
Citations
304
Access
Closed

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Sanford L. Braver, Felix Thoemmes, Robert Rosenthal (2014). Continuously Cumulating Meta-Analysis and Replicability. Perspectives on Psychological Science , 9 (3) , 333-342. https://doi.org/10.1177/1745691614529796

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DOI
10.1177/1745691614529796