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Polytomous item explanatory IRT models with random item effects: Concepts and an application

机译:多种物品解释性IRT模型,随机项目效果:概念和应用

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This paper proposes three polytomous item explanatory models with random item errors in Item Response Theory (IRT), by extending the Linear Logistic Test Model with item error (LLTM + epsilon) approach to polytomous data. The proposed models, also regarded as polytomous random item effects models, can take the uncertainty in explanation and/or the random nature of item parameters into account for polytomous items. To develop the models, the concepts and types of polytomous random item effects are investigated and then added into the existing polytomous item explanatory models. For estimation of the proposed models with crossed random effects for polytomous data, a Bayesian inference method is adopted for data analysis. An empirical example demonstrates practical implications and applications of the proposed models to the Verbal Aggression data. The empirical findings show that the proposed models with random item errors perform better than the existing models without random item errors in terms of the goodness-of-fit and reconstructing the step difficulties and also demonstrate methodological and practical differences of the proposed models in interpreting the item property effects in each of the item location explanatory Many-Facet Rasch Model and the step difficulty explanatory Linear Partial Credit Model approaches. (C) 2019 Elsevier Ltd. All rights reserved.
机译:本文提出了三种多种物品解释模型,其中包含项目响应理论(IRT)中的随机物品误差,通过将线性逻辑测试模型与项目误差(LLTM + EPSILON)方法扩展到多色数据。所提出的模型,也被认为是多特组织随机物品效果模型,可以考虑到多种物品的解释和/或项目参数的随机性的不确定性。为了开发模型,研究了多重随机物品效果的概念和类型,然后将其添加到现有的多色物品解释模型中。为了估计具有对多种子数据的交叉随机效应的提出模型,采用贝叶斯推理方法进行数据分析。经验示例展示了所提出的模型对言语侵略数据的实际影响和应用。经验研究结果表明,随机物品误差的提出模型在没有随机物品错误的情况下表现优于适合的良好和重建步骤困难,并且还证明了在解释中提出的模型的方法论和实际差异项目属性效果在每个项目位置说明的许多方面Rasch模型和步骤难度解释性线性部分信用模型方法。 (c)2019年elestvier有限公司保留所有权利。

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