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Old and New Ideas for Data Screening and Assumption Testing for Exploratory and Confirmatory Factor Analysis

机译:探索性和验证性因素分析的数据筛选和假设测试的新想法

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We provide a basic review of the data screening and assumption testing issues relevant to exploratory and confirmatory factor analysis along with practical advice for conducting analyses that are sensitive to these concerns. Historically, factor analysis was developed for explaining the relationships among many continuous test scores, which led to the expression of the common factor model as a multivariate linear regression model with observed, continuous variables serving as dependent variables, and unobserved factors as the independent, explanatory variables. Thus, we begin our paper with a review of the assumptions for the common factor model and data screening issues as they pertain to the factor analysis of continuous observed variables. In particular, we describe how principles from regression diagnostics also apply to factor analysis. Next, because modern applications of factor analysis frequently involve the analysis of the individual items from a single test or questionnaire, an important focus of this paper is the factor analysis of items. Although the traditional linear factor model is well-suited to the analysis of continuously distributed variables, commonly used item types, including Likert-type items, almost always produce dichotomous or ordered categorical variables. We describe how relationships among such items are often not well described by product-moment correlations, which has clear ramifications for the traditional linear factor analysis. An alternative, non-linear factor analysis using polychoric correlations has become more readily available to applied researchers and thus more popular. Consequently, we also review the assumptions and data-screening issues involved in this method. Throughout the paper, we demonstrate these procedures using an historic data set of nine cognitive ability variables.
机译:我们提供与探索性和确认性因素分析相关的数据筛选和假设测试问题的基本概述,以及进行对这些问题敏感的分析的实用建议。从历史上看,因子分析用于解释许多连续测试分数之间的关系,从而导致公因子模型表达为多元线性回归模型,其中观察到的连续变量作为因变量,而未观察到的因素作为独立的,解释性的变量。因此,我们从对共同因素模型和数据筛选问题的假设的回顾开始,因为它们与连续观测变量的因素分析有关。特别是,我们描述了回归诊断的原理也如何应用于因子分析。其次,由于因子分析的现代应用经常涉及从单个测试或问卷中分析单个项目,因此本文的重点是对项目进行因子分析。尽管传统的线性因子模型非常适合分析连续分布的变量,但常用的项目类型(包括李克特类型的项目)几乎总是产生二分或有序的分类变量。我们描述了产品与时刻的相关性通常无法很好地描述此类项目之间的关系,这对传统的线性因子分析有明显的影响。应用多变量相关性的另一种非线性因素分析已变得更易于应用研究人员使用,因此越来越受欢迎。因此,我们还将审查此方法涉及的假设和数据筛选问题。在整个论文中,我们使用具有9个认知能力变量的历史数据集来演示这些过程。

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