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A non-parametric Bayesian diagnostic for detecting differential item functioning in IRT models

机译:用于检测IRT模型中差异项功能的非参数贝叶斯诊断

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摘要

Differential item functioning (DIF) in tests and multi-item surveys occurs when a lack of conditional independence exists between the response to one or more items and membership to a particular group, given equal levels of proficiency. We develop an approach to detecting DIF in the context of item response theory (IRT) models based on computing a diagnostic which is the posterior mean of a p-value. IRT models are fit in a Bayesian framework, and simulated proficiency parameters from the posterior distribution are retained. Monte Carlo estimates of the p-value diagnostic are then computed by comparing the fit of nonparametric regressions of item responses on simulated proficiency parameters and group membership. Some properties of our approach are examined through a simulation experiment. We apply our method to the analysis of responses from two separate studies to the BASIS-24, a widely used self-report mental health assessment instrument, to examine DIF between the English and Spanish-translated version of the survey.
机译:在给定相同熟练度的情况下,当对一个或多个项目的响应与对特定组的成员资格之间缺乏条件独立性时,就会在测试和多项目调查中出现差异项目功能(DIF)。我们开发了一种在项目响应理论(IRT)模型的上下文中检测DIF的方法,该方法基于计算诊断(p值的后均值)。 IRT模型适合贝叶斯框架,并且保留了后验分布的模拟熟练度参数。然后,通过比较项目响应对模拟熟练程度参数和组成员资格的非参数回归的拟合,计算出p值诊断的蒙特卡洛估计。我们的方法的一些属性通过模拟实验进行了检查。我们将我们的方法应用于两项独立研究对BASIS-24(一种广泛使用的自我报告心理健康评估工具)的回答的分析,以检查英语和西班牙语翻译版本的调查之间的DIF。

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