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Bayesian analysis of multivariate ordered probit model with individual heterogeneity

机译:多变量有序概率模型与个别异质性分析

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In recent years, models incorporating heterogeneity among individuals have become increasingly popular in the analyses on subjective ordered choice data. However, there are rare previous studies that include individual heterogeneity in the multivariate ordered probit model. In this article, we describe the Bayesian multivariate ordered probit model introduced by Chen and Dey (in: Dey, Ghosh, Mallick (eds) Generalized linear models: a Bayesian perspective. Marcel-Dekker, New York, pp 133-157, 2000) (Algorithm 1), and propose a new algorithm that includes individual heterogeneity in the cutpoint function (Algorithm 2). Further, we examine the two algorithms using real data from World Values Survey wave 5, collected between 2005 and 2009. The empirical results demonstrate that the model with individual heterogeneity outperforms that without heterogeneity.
机译:近年来,在主观有序选择数据的分析中,纳入个人之间异质性的模型变得越来越受欢迎。然而,存在罕见的先前研究,包括多变量有序探测模型中的个体异质性。在本文中,我们描述了Chen And Dey推出的贝叶斯多变量有序概率模型(在:Dey,Ghosh,Mallick(EDS)广义的线性模型:贝叶斯视角。Marcel-Dekker,纽约,PP 133-157,2000) (算法1),并提出一种新的算法,包括切口函数中的各个异质性(算法2)。此外,我们使用来自世界价值调查波5的真实数据来检查两种算法,在2005年至2009年之间收集。实证结果表明,具有单个异质性的模型优于没有异质性的效果。

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