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Item Response Theory Modeling for Examinee-selected Items with Rater Effect

机译:患有患者疗效的考生选择项目的项目响应理论建模

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摘要

Some large-scale testing requires examinees to select and answer a fixed number of items from given items (e.g., select one out of the three items). Usually, they are constructed-response items that are marked by human raters. In this examinee-selected item (ESI) design, some examinees may benefit more than others from choosing easier items to answer, and so the missing data induced by the design become missing not at random (MNAR). Although item response theory (IRT) models have recently been developed to account for MNAR data in the ESI design, they do not consider the rater effect; thus, their utility is seriously restricted. In this study, two methods are developed: the first one is a new IRT model to account for both MNAR data and rater severity simultaneously, and the second one adapts conditional maximum likelihood estimation and pairwise estimation methods to the ESI design with the rater effect. A series of simulations was then conducted to compare their performance with those of conventional IRT models that ignored MNAR data or rater severity. The results indicated a good parameter recovery for the new model. The conditional maximum likelihood estimation and pairwise estimation methods were applicable when the Rasch models fit the data, but the conventional IRT models yielded biased parameter estimates. An empirical example was given to illustrate these new initiatives.
机译:一些大规模的测试需要考生选择并回答来自给定项目的固定数量的项目(例如,选择三项中的一个)。通常,它们是由人类评估者标记的响应项。在此考生选择的项目(ESI)设计中,一些考生可能会受益于其他考生,而不是选择更容易的项目来回答,因此设计引起的缺失数据不会随机丢失(MNAR)。尽管最近开发了项目响应理论(IRT)模型以考虑ESI设计中的MNAR数据,但它们不考虑患者效应;因此,他们的效用严重限制。在这项研究中,开发了两种方法:第一个是一个新的IRT模型,用于同时考虑MNAR数据和Rater严重程度,并且第二个是用rater效应来适应ESI设计的条件最大似然估计和成对估计方法。然后进行了一系列模拟以将它们的性能与忽略MNAR数据或Rater严重程度的传统IRT模型进行比较。结果表明了新模型的良好参数恢复。当RASCH模型适合数据时,可以适用条件最大似然估计和成对估计方法,但传统的IRT模型产生偏置参数估计。给出了一个经验的例子来说明这些新举措。

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