Comparing Bayesian Variable Selection to Lasso Approaches for Applications in Psychology.

IF 2.9 2区 心理学 Q1 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
Psychometrika Pub Date : 2023-09-01 Epub Date: 2023-05-23 DOI:10.1007/s11336-023-09914-9
Sierra A Bainter, Thomas G McCauley, Mahmoud M Fahmy, Zachary T Goodman, Lauren B Kupis, J Sunil Rao
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引用次数: 0

Abstract

In the current paper, we review existing tools for solving variable selection problems in psychology. Modern regularization methods such as lasso regression have recently been introduced in the field and are incorporated into popular methodologies, such as network analysis. However, several recognized limitations of lasso regularization may limit its suitability for psychological research. In this paper, we compare the properties of lasso approaches used for variable selection to Bayesian variable selection approaches. In particular we highlight advantages of stochastic search variable selection (SSVS), that make it well suited for variable selection applications in psychology. We demonstrate these advantages and contrast SSVS with lasso type penalization in an application to predict depression symptoms in a large sample and an accompanying simulation study. We investigate the effects of sample size, effect size, and patterns of correlation among predictors on rates of correct and false inclusion and bias in the estimates. SSVS as investigated here is reasonably computationally efficient and powerful to detect moderate effects in small sample sizes (or small effects in moderate sample sizes), while protecting against false inclusion and without over-penalizing true effects. We recommend SSVS as a flexible framework that is well-suited for the field, discuss limitations, and suggest directions for future development.

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比较贝叶斯变量选择法和拉索法在心理学中的应用。
在本文中,我们回顾了解决心理学变量选择问题的现有工具。拉索回归(lasso regression)等现代正则化方法最近被引入该领域,并被纳入网络分析等流行方法中。然而,拉索正则化的一些公认局限性可能会限制其在心理学研究中的适用性。在本文中,我们比较了用于变量选择的拉索方法和贝叶斯变量选择方法的特性。我们特别强调了随机搜索变量选择(SSVS)的优势,这些优势使其非常适合心理学中的变量选择应用。在预测大样本抑郁症状的应用中,我们展示了这些优势,并将 SSVS 与套索式惩罚进行了对比,同时还进行了模拟研究。我们研究了样本大小、效应大小和预测因子之间的相关性模式对正确率、错误纳入率和估计偏差的影响。本文研究的 SSVS 具有合理的计算效率和强大的功能,可以在小样本量中检测到中等效应(或在中等样本量中检测到小效应),同时防止误纳入,也不会过度贬低真实效应。我们推荐 SSVS,认为它是一个非常适合该领域的灵活框架,讨论了其局限性,并提出了未来的发展方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Psychometrika
Psychometrika 数学-数学跨学科应用
CiteScore
4.40
自引率
10.00%
发文量
72
审稿时长
>12 weeks
期刊介绍: The journal Psychometrika is devoted to the advancement of theory and methodology for behavioral data in psychology, education and the social and behavioral sciences generally. Its coverage is offered in two sections: Theory and Methods (T& M), and Application Reviews and Case Studies (ARCS). T&M articles present original research and reviews on the development of quantitative models, statistical methods, and mathematical techniques for evaluating data from psychology, the social and behavioral sciences and related fields. Application Reviews can be integrative, drawing together disparate methodologies for applications, or comparative and evaluative, discussing advantages and disadvantages of one or more methodologies in applications. Case Studies highlight methodology that deepens understanding of substantive phenomena through more informative data analysis, or more elegant data description.
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