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首页> 外文期刊>Structural equation modeling >Simplifying the Assessment of Measurement Invariance over Multiple Background Variables: Using Regularized Moderated Nonlinear Factor Analysis to Detect Differential Item Functioning
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Simplifying the Assessment of Measurement Invariance over Multiple Background Variables: Using Regularized Moderated Nonlinear Factor Analysis to Detect Differential Item Functioning

机译:通过多个背景变量简化测量不变性的评估:使用正则化的次要非线性因子分析来检测差分项目功能

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摘要

Determining whether measures are equally valid for all individuals is a core component of psychometric analysis. Traditionally, the evaluation of measurement invariance (MI) involves comparing independent groups defined by a single categorical covariate (e.g., men and women) to determine if there are any items that display differential item functioning (DIF). More recently, Moderated Nonlinear Factor Analysis (MNLFA) has been advanced as an approach for evaluating MI/DIF simultaneously over multiple background variables, categorical and continuous. Unfortunately, conventional procedures for detecting DIF do not scale well to the more complex MNLFA. The current manuscript therefore proposes a regularization approach to MNLFA estimation that penalizes the likelihood for DIF parameters (i.e., rewarding sparse DIF). This procedure avoids the pitfalls of sequential inference tests, is automated for end users, and is shown to perform well in both a small-scale simulation and an empirical validation study.
机译:确定措施是否同样适用于所有个人是心理测量分析的核心组成部分。传统上,测量不变性(MI)的评估涉及比较由单个分类协变量(例如,男性和女性)定义的独立组来确定是否有任何显示差分项目功能的项目(DIF)。最近,次要的非线性因子分析(MNLFA)已经前进为在多个背景变量,分类和连续的同时评估MI / DIF的方法。遗憾的是,用于检测DIF的常规程序对更复杂的MNLFA不符号。因此,目前的稿件提出了MNLFA估计的正则化方法,以惩罚不同参数的可能性(即,奖励稀疏DIF)。此过程避免了顺序推理测试的陷阱,用于最终用户的自动化,并显示在小规模仿真和经验验证研究中表现良好。

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