现存分类群
估计
计算机科学
特质
统计
计量经济学
实证研究
过程(计算)
稳健性(进化)
机器学习
心理学
统计假设检验
数据挖掘
人工智能
稳健统计
估计理论
考试(生物学)
匹配(统计)
平衡(能力)
评价方法
点估计
作者
F. Chen,Meng Ou,Daxun Wang,Siwei Peng,Yan Cai,Dongbo Tu
标识
DOI:10.3102/10769986251345204
摘要
Measurement and evaluation play a crucial role in psychology and pedagogy, with testing serving as the primary tool for assessment. Researchers and administrators consistently seek methods to accurately assess a subject’s traits based on test results. Traditional person traits estimation methods heavily rely on the authenticity of responses and suppose all respondents honestly and normally respond to all items. However, when aberrant responses occur, biased results can arise with traditional methods, thereby diminishing the precision of person trait estimation. Robust estimation method is believed as an effectively method to mitigate the impact of aberrant responses on estimation accuracy. Nevertheless, extant robust estimation approaches, while reducing estimation bias for aberrant test-takers, also impede estimation precision for normal test-takers. To address this issue, we proposed an innovative robust estimation method that can balance the mitigation of aberrant behavior’s impact on accuracy with the assurance of precision in normal test-taker estimation. Simulation findings reveal the newly proposed method consistently maintains exceptional estimation accuracy, demonstrating precise estimates even in the absence of anomalous behavior. The empirical study further clarifies the applicability and advantages of our method within psychological and educational assessments.
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