残余物
统计的
基质(化学分析)
计算机科学
数据挖掘
检验统计量
统计
算法
认知
人工智能
数学
机器学习
统计假设检验
心理学
神经科学
复合材料
材料科学
作者
Xiaofeng Yu,Ying Cheng
摘要
In a cognitive diagnostic assessment (CDA), attributes refer to fine‐grained knowledge points or skills. The Q ‐matrix is a central component of CDA, which specifies the relationship between items and attributes. Oftentimes, attributes and Q ‐matrix are defined by subject‐matter experts, and assumed to be appropriate without any misspecifications. However, this assumption does not always hold in real applications. To address this concern, this paper proposes a residual‐based statistic for validating the Q ‐matrix. Its performance is evaluated in a simulation study and compared against that of an existing method proposed in Liu, Xu and Ying (2012, Applied Psychological Measurement , 36, 548). Simulation results indicate that the proposed method leads to a higher recovery rate of the Q ‐matrix and is computationally more efficient. The advantage in computational efficiency is particularly pronounced when the number of attributes measured by the test reaches five or more. Results also suggest that the two methods have different tendencies in estimating the attribute vector for each item. In cases where the methods fail to recover the correct Q ‐matrix, the method in Liu et al. (2012, Applied Psychological Measurement, 36, 548) tends to overestimate the number of attributes measured by the items, whereas our method does not show that bias.
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