因子分析中潜在变量贝叶斯推理的概念基础

IF 0.6 Q3 SOCIAL SCIENCES, INTERDISCIPLINARY Measurement-Interdisciplinary Research and Perspectives Pub Date : 2022-10-02 DOI:10.1080/15366367.2021.1996819
R. Levy
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引用次数: 1

摘要

获得因子分析模型中潜在变量的值,也称为因子得分,一直是研究人员感兴趣的问题。然而,许多因子分析的处理并不关注对潜在变量的推断,从贝叶斯的角度进行推断的就更少了。因此,尽管某些现有的程序在某种程度上可能被视为贝叶斯,但研究人员可能对贝叶斯在这个问题上的思维并不熟悉。本文的重点是为潜在变量的贝叶斯推理提供一个概念基础,不仅阐明了贝叶斯推理对潜在变量值的看法,而且解释了为什么贝叶斯推理适合于这个问题。至于为什么,有人认为,互换性的概念激发了因子分析的形式,以及潜在变量的贝叶斯推理。这一论点得到了贝叶斯推理在类似环境中的广泛应用的支持,包括其他测量模型中的潜在变量、多层模型和缺失数据。至于什么,本文描述了在其他参数已知时的贝叶斯分析,以及在其他参数未知时的部分贝叶斯分析和完全贝叶斯分析。这有助于讨论研究人员在采用贝叶斯方法推断潜在变量时的各种选择。
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Conceptual Grounding for Bayesian Inference for Latent Variables in Factor Analysis
ABSTRACT Obtaining values for latent variables in factor analysis models, also referred to as factor scores, has long been of interest to researchers. However, many treatments of factor analysis do not focus on inference about the latent variables, and even fewer do so from a Bayesian perspective. Researchers may therefore be ill-acquainted with Bayesian thinking on this issue, despite the fact that certain existing procedures may be seen as Bayesian to some extent. The focus of this paper is to provide a conceptual grounding for Bayesian inference for latent variables, articulating not only what Bayesian inference has to say about values for latent variables, but why Bayesian inference is suited for this problem. As to why, it is argued that the notion of exchangeability motivates the form of factor analysis, as well as Bayesian inference for latent variables. The argument is supported by documenting the widespread use of Bayesian inference in analogous settings, including latent variables in other measurement models, multilevel models, and missing data. As to what, this work describes a Bayesian analysis when other parameters are known, as well as partially and fully Bayesian analyses when other parameters are unknown. This facilitates a discussion of various choices researchers have when adopting Bayesian approaches to inference about latent variables.
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来源期刊
Measurement-Interdisciplinary Research and Perspectives
Measurement-Interdisciplinary Research and Perspectives SOCIAL SCIENCES, INTERDISCIPLINARY-
CiteScore
1.80
自引率
0.00%
发文量
23
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