Small Sample Meta-Analyses: Exploring heterogeneity using MetaForest

Caspar J. Van Lissa

Research output: Chapter in Book/Report/Conference proceedingChapterAcademicpeer-review

Abstract

Meta-analyses often suffer from two related problems: A small sample of studies, and many between-studies differences that might influence the effect size. Power is typically too low to adequately account for these between-study differences using meta-regression. Researchers risk overfitting: Capturing noise in the data, rather than true effects. This chapter introduces MetaForest: A machine-learning-based approach for identifying relevant moderators in meta-analysis. MetaForest is robust to overfitting, handles many moderators, and captures non-linear effects and higher-order interactions. This chapter discusses the problems with small samples and many moderators, introduces MetaForest as a small sample solution, and provides a tutorial example analysis.
Original languageEnglish
Title of host publicationSmall Sample Size Solutions
Subtitle of host publicationA Guide for Applied Researchers and Practitioners
EditorsRens Van De Schoot, Milica Miočević
Place of PublicationLondon
PublisherRoutledge
Chapter13
Pages186-202
Edition1
ISBN (Electronic)9780429273872
ISBN (Print)9780367221898, 9780367222222
DOIs
Publication statusPublished - 21 Feb 2020

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