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分类变量中的效应方向:查看表格内部。

Direction of effects in categorical variables: Looking inside the table.

作者信息

von Eye Alexander, Wiedermann Wolfgang

机构信息

Michigan State University.

University of Missouri.

出版信息

J Pers Oriented Res. 2017 Nov 1;3(1):11-27. doi: 10.17505/jpor.2017.02. eCollection 2017.

Abstract

In the variable-oriented domain, direction of dependence analysis of metric variables is defined in terms of changes that the independent (or causal) variable has on the univariate distribution of the dependent variable. In this article, we take a person-oriented perspective and extend this approach in two aspects, for categorical variables. First, instead of looking at univariate frequency distributions, direction dependence is defined in terms of special interactions. That is, direction dependence is defined as a process that can be detected "inside the table" instead of in its marginals. Second, the present approach takes an event-based perspective. That is, direction of effect is defined for individual categories of variables instead of the entire range of possible scores (or categories). Log-linear models are presented that allow researchers to test the corresponding hypotheses. Simulation studies illustrate characteristics and performance of these models. An empirical example investigates whether there is truth to the adage that money does not buy happiness. Extensions and limitations are discussed.

摘要

在以变量为导向的领域中,度量变量的依赖关系分析方向是根据自变量(或因果变量)对因变量单变量分布的变化来定义的。在本文中,我们从以人为本的角度出发,针对分类变量在两个方面扩展了这种方法。首先,不是着眼于单变量频率分布,而是根据特殊交互作用来定义方向依赖性。也就是说,方向依赖性被定义为一个可以在“表格内部”而非其边缘部分检测到的过程。其次,当前方法采用基于事件的视角。也就是说,效应方向是针对变量的各个类别而非整个可能分数范围(或类别)来定义的。本文提出了对数线性模型,使研究人员能够检验相应的假设。模拟研究说明了这些模型的特征和性能。一个实证例子调查了“金钱买不来幸福”这句格言是否属实。同时还讨论了扩展和局限性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/776b/7842652/39999e4cbcdd/JPOR-3-1-011-g001.jpg

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