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Multidimensional Computerized Adaptive Testing Using Non-Compensatory Item Response Theory Models

机译:使用非补偿项响应理论模型的多维计算机自适应测试

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Current use of multidimensional computerized adaptive testing (MCAT) has been developed in conjunction with compensatory multidimensional item response theory (MIRT) models rather than with non-compensatory ones. In recognition of the usefulness of MCAT and the complications associated with non-compensatory data, this study aimed to develop MCAT algorithms using non-compensatory MIRT models and to evaluate their performance. For the purpose of the study, three item selection methods were adapted and compared, namely, the Fisher information method, the mutual information method, and the Kullback-Leibler information method. The results of a series of simulations showed that the Fisher information and mutual information methods performed similarly, and both outperformed the Kullback-Leibler information method. In addition, it was found that the more stringent the termination criterion and the higher the correlation between the latent traits, the higher the resulting measurement precision and test reliability. Test reliability was very similar across the dimensions, regardless of the correlation between the latent traits and termination criterion. On average, the difficulties of the administered items were found to be at a lower level than the examinees' abilities, which shed light on item bank construction for non-compensatory items.
机译:目前使用多维计算机的自适应测试(MCAT)已经与补偿多维物品响应理论(MIRT)模型结合使用,而不是使用非补偿性。为了认识到MCAT的有用性和与非补偿数据相关的并发症,本研究旨在使用非补偿MIRT模型开发MCAT算法并评估其性能。出于该研究的目的,三项项目选择方法进行了调整和比较,即Fisher信息方法,互信息方法和Kullback-Leibler信息方法。一系列仿真的结果表明,相同地执行Fisher信息和互信息方法,并且均优于Kullback-Leibler信息方法。另外,发现终止标准越严格,潜伏性状之间的相关性越高,所产生的测量精度和测试可靠性越高。无论潜在特征与终止标准之间的相关性如何,测试可靠性都非常相似。平均而言,遇到的物品的困难被发现比考生的能力较低,揭示了非补偿物品的项目银行建设。

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