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Supervised machine learning methods in psychology: A practical introduction with annotated R code
Author(s) -
Rosenbusch Hannes,
Soldner Felix,
Evans Anthony M.,
Zeelenberg Marcel
Publication year - 2021
Publication title -
social and personality psychology compass
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.699
H-Index - 53
ISSN - 1751-9004
DOI - 10.1111/spc3.12579
Subject(s) - machine learning , random forest , artificial intelligence , computer science , decision tree , code (set theory) , sample (material) , ridge , chemistry , set (abstract data type) , chromatography , programming language , paleontology , biology
Machine learning methods for prediction and pattern detection are increasingly prevalent in psychological research. We provide an introductory overview of machine learning, its applications, and describe how to implement models for research. We review fundamental concepts of machine learning, such as prediction accuracy and out‐of‐sample evaluation, and summarize standard prediction algorithms including linear regressions, ridge regressions, decision trees, and random forests (plus additional algorithms in the supplementary materials). We demonstrate each method with examples and annotated R code, and discuss best practices for determining sample sizes; comparing model performances; tuning prediction models; preregistering prediction models; and reporting results. Finally, we discuss the value of machine learning methods in maintaining psychology’s status as a predictive science.

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