Department of Educational Psychology, East China Normal University.
Department of Methodology and Statistics, Utrecht University.
Multivariate Behav Res. 2022 Mar-May;57(2-3):264-278. doi: 10.1080/00273171.2020.1813067. Epub 2020 Sep 1.
This paper presents a novel Bayesian variable selection approach that accounts for the sign of the regression coefficients based on multivariate one-sided tests. We propose a truncated prior to specify a prior distribution of coefficients with anticipated signs in a given model. Informative priors for the direction of the effects can be incorporated into prior model probabilities. The best subset of variables is selected by comparing the posterior probabilities of the possible models. The new Bayesian one-sided variable selection procedure has higher chance to include relevant variables and therefore select the best model, if the anticipated direction is accurate. For a large number of candidate variables, we present an adaptation of a Bayesian model search method for the one-sided variable selection problem to ensure fast computation. In addition, a fully Bayesian approach is used to adjust the prior inclusion probability of each one-sided model to correct for multiplicity. The performance of the proposed method is investigated using several simulation studies and two real data examples.
本文提出了一种新的贝叶斯变量选择方法,该方法基于多变量单边检验考虑了回归系数的符号。我们提出了一种截断先验,以指定给定模型中具有预期符号的系数的先验分布。可以将影响方向的信息先验纳入先验模型概率中。通过比较可能模型的后验概率来选择变量的最佳子集。如果预期方向准确,则新的贝叶斯单边变量选择过程更有可能包含相关变量并因此选择最佳模型。对于大量候选变量,我们提出了一种贝叶斯模型搜索方法的改编,用于单边变量选择问题,以确保快速计算。此外,使用完全贝叶斯方法调整每个单边模型的先验包含概率,以纠正多重性。通过几项模拟研究和两个真实数据示例来研究所提出方法的性能。