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 language | English |
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Title of host publication | Small Sample Size Solutions |
Subtitle of host publication | A Guide for Applied Researchers and Practitioners |
Editors | Rens Van De Schoot, Milica Miočević |
Place of Publication | London |
Publisher | Routledge |
Chapter | 13 |
Pages | 186-202 |
Edition | 1 |
ISBN (Electronic) | 9780429273872 |
ISBN (Print) | 9780367221898, 9780367222222 |
DOIs | |
Publication status | Published - 21 Feb 2020 |