Department of Statistics, University of Michigan, 1085 South University, Ann Arbor, 48108, USA.
University of Hong Kong, Pok Fu Lam, Hong Kong.
Psychometrika. 2023 Mar;88(1):51-75. doi: 10.1007/s11336-022-09878-2. Epub 2022 Aug 16.
A number of parametric and nonparametric methods for estimating cognitive diagnosis models (CDMs) have been developed and applied in a wide range of contexts. However, in the literature, a wide chasm exists between these two families of methods, and their relationship to each other is not well understood. In this paper, we propose a unified estimation framework to bridge the divide between parametric and nonparametric methods in cognitive diagnosis to better understand their relationship. We also develop iterative joint estimation algorithms and establish consistency properties within the proposed framework. Lastly, we present comprehensive simulation results to compare different methods and provide practical recommendations on the appropriate use of the proposed framework in various CDM contexts.
已经开发并应用了许多参数和非参数方法来估计认知诊断模型 (CDM),并在广泛的背景下得到了应用。然而,在文献中,这两种方法之间存在着很大的差距,它们之间的关系也没有得到很好的理解。在本文中,我们提出了一个统一的估计框架,以弥合认知诊断中参数和非参数方法之间的鸿沟,从而更好地理解它们之间的关系。我们还开发了迭代联合估计算法,并在提出的框架内建立了一致性性质。最后,我们给出了全面的模拟结果,比较了不同的方法,并就如何在各种 CDM 环境中正确使用所提出的框架提供了实际建议。