Interpretable Machine Learning for Psychological Research: Opportunities and Pitfalls

被引:17
|
作者
Henninger, Mirka [1 ,2 ]
Debelak, Rudolf [1 ]
Rothacher, Yannick [1 ]
Strobl, Carolin [1 ]
机构
[1] Univ Zurich, Inst Psychol, Zurich, Eswatini
[2] Univ Zurich, Inst Psychol, CH-8050 Zurich, Switzerland
关键词
interpretation techniques; machine learning; neural network; random forest; correlated predictors; interaction detection; VARIABLE IMPORTANCE; CLASSIFICATION TREES; NEURAL-NETWORKS; PREDICTION; INFERENCE; MODELS;
D O I
10.1037/met0000560
中图分类号
B84 [心理学];
学科分类号
04 ; 0402 ;
摘要
In recent years, machine learning methods have become increasingly popular prediction methods in psychology. At the same time, psychological researchers are typically not only interested in making predictions about the dependent variable, but also in learning which predictor variables are relevant, how they influence the dependent variable, and which predictors interact with each other. However, most machine learning methods are not directly interpretable. Interpretation techniques that support researchers in describing how the machine learning technique came to its prediction may be a means to this end. We present a variety of interpretation techniques and illustrate the opportunities they provide for interpreting the results of two widely used black box machine learning methods that serve as our examples: random forests and neural networks. At the same time, we illustrate potential pitfalls and risks of misinterpretation that may occur in certain data settings. We show in which way correlated predictors impact interpretations with regard to the relevance or shape of predictor effects and in which situations interaction effects may or may not be detected. We use simulated didactic examples throughout the article, as well as an empirical data set for illustrating an approach to objectify the interpretation of visualizations. We conclude that, when critically reflected, interpretable machine learning techniques may provide useful tools when describing complex psychological relationships.
引用
收藏
页数:36
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