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A Nonparametric Approach to Cognitive Diagnosis by Proximity to Ideal Response Patterns

机译:通过接近理想反应模式进行认知诊断的非参数方法

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A trend in educational testing is to go beyond unidimensional scoring and provide a more complete profile of skills that have been mastered and those that have not. To achieve this, cognitive diagnosis models have been developed that can be viewed as restricted latent class models. Diagnosis of class membership is the statistical objective of these models. As an alternative to latent class modeling, a nonparametric procedure is introduced that only requires specification of an item-by-attribute association matrix, and classifies according to minimizing a distance measure between observed responses, and the ideal response for a given attribute profile that would be implied by the item-by-attribute association matrix. This procedure requires no statistical parameter estimation, and can be used on a sample size as small as 1. Heuristic arguments are given for why the nonparametric procedure should be effective under various possible cognitive diagnosis models for data generation. Simulation studies compare classification rates with parametric models, and consider a variety of distance measures, data generation models, and the effects of model misspecification. A real data example is provided with an analysis of agreement between the nonparametric method and parametric approaches.
机译:教育测试的一种趋势是超越单维度评分,并提供已掌握和尚未掌握的技能的更完整概况。为了实现这一点,已经开发了可以被视为受限潜伏类模型的认知诊断模型。类成员身份的诊断是这些模型的统计目标。作为潜在类建模的替代方法,引入了一种非参数过程,该过程仅需要指定逐项关联矩阵,并根据最小化观察到的响应与给定属性配置文件的理想响应之间的距离度量进行分类逐项关联矩阵暗示。此过程不需要统计参数估计,并且可以在小至1的样本量上使用。给出了启发式的论据,说明了为什么非参数过程在各种可能的认知诊断模型下都应该有效地进行数据生成。仿真研究将分类率与参数模型进行比较,并考虑各种距离度量,数据生成模型以及模型指定错误的影响。提供了一个真实的数据示例,其中分析了非参数方法与参数方法之间的一致性。

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