Latent Variable Estimation in Factor Analysis and Item Response Theory

D. Thissen, Anne Thissen-Roe
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Abstract

This essay sketches the historical development of latent variable scoring procedures in the item response theory (IRT) and factor analysis literatures, observing that the most commonly used score estimates in both traditions are fundamentally the same; only methods of calculation differ. Different procedures have been used to derive factor score estimates and latent variable estimates in IRT, and different computational procedures have been the result. Due to differences in the context of score usage, challenges have led to different solutions in the IRT and factor analytic traditions. The needs for bias corrections differ, as do the corrections that have been proposed. While the standard factor analysis model has naturally Gaussian likelihoods, IRT does not, but in IRT normal approximations have been used in various contexts to make the IRT computations more like those of factor analysis. Finally, factor analysis alone has been the home of decades of controversy over factor score indeterminacy, while IRT has not, even though the scores in question are the same. That is an artifact of history and the ways the models have been written in the IRT and factor analytic literatures. IRT has never been plagued with questions of indeterminacy, which helps to clarify the position that what is referred to as indeterminacy is not a problem.
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因子分析中的潜在变量估计与项目反应理论
本文概述了潜在变量计分程序在项目反应理论(IRT)和因子分析文献中的历史发展,发现这两种传统中最常用的计分方法基本相同;只有计算方法不同。在IRT中,使用了不同的程序来推导因子得分估计和潜在变量估计,并且得到了不同的计算程序。由于分数使用背景的差异,挑战导致了IRT和因素分析传统中不同的解决方案。对偏差校正的需求是不同的,所提出的校正也是不同的。虽然标准因子分析模型具有自然的高斯似然,但IRT没有,但在IRT中,正态近似已在各种情况下使用,使IRT计算更像因子分析的计算。最后,几十年来,因子分析本身一直是因子分数不确定性争议的焦点,而IRT则没有,尽管有争议的分数是相同的。这是历史的产物,也是IRT和因子分析文献中所写模型的方式。IRT从未受到不确定性问题的困扰,这有助于澄清所谓的不确定性不是问题的立场。
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