心理学研究的可解释机器学习:机遇与陷阱。

IF 7.6 1区 心理学 Q1 PSYCHOLOGY, MULTIDISCIPLINARY
Mirka Henninger, Rudolf Debelak, Yannick Rothacher, Carolin Strobl
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引用次数: 3

摘要

近年来,机器学习方法已成为心理学中越来越流行的预测方法。与此同时,心理学研究人员通常不仅对因变量的预测感兴趣,还对了解哪些预测变量是相关的、它们如何影响因变量以及哪些预测变量相互作用感兴趣。然而,大多数机器学习方法都不能直接解释。支持研究人员描述机器学习技术是如何实现预测的解释技术可能是实现这一目标的一种手段。我们介绍了各种解释技术,并说明了它们为解释两种广泛使用的黑匣子机器学习方法的结果提供的机会,这两种方法是我们的例子:随机森林和神经网络。同时,我们说明了在某些数据设置中可能出现的潜在陷阱和误解风险。我们展示了相关预测因子以何种方式影响预测因子效应的相关性或形状的解释,以及在哪些情况下可能检测到或可能检测不到交互效应。我们在整篇文章中使用了模拟的教学示例,以及实证数据集来说明可视化解释的客观化方法。我们得出的结论是,当批判性地反思时,可解释的机器学习技术可能会在描述复杂的心理关系时提供有用的工具。(PsycInfo数据库记录(c)2023 APA,保留所有权利)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Interpretable machine learning for psychological research: Opportunities and pitfalls.

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. (PsycInfo Database Record (c) 2023 APA, all rights reserved).

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来源期刊
Psychological methods
Psychological methods PSYCHOLOGY, MULTIDISCIPLINARY-
CiteScore
13.10
自引率
7.10%
发文量
159
期刊介绍: Psychological Methods is devoted to the development and dissemination of methods for collecting, analyzing, understanding, and interpreting psychological data. Its purpose is the dissemination of innovations in research design, measurement, methodology, and quantitative and qualitative analysis to the psychological community; its further purpose is to promote effective communication about related substantive and methodological issues. The audience is expected to be diverse and to include those who develop new procedures, those who are responsible for undergraduate and graduate training in design, measurement, and statistics, as well as those who employ those procedures in research.
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