The paper proposes a new latent variable model for the simultaneous (two-way) detection of outlying individuals and items for item-response-type data. The proposed model is a synergy between a factor model for binary responses and continuous response times that captures normal item response behaviour and a latent class model that captures the outlying individuals and items. A statistical decision framework is developed under the proposed model that provides compound decision rules for controlling local false discovery/nondiscovery rates of outlier detection. Statistical inference is carried out under a Bayesian framework, for which a Markov chain Monte Carlo algorithm is developed. The proposed method is applied to the detection of cheating in educational tests due to item leakage using a case study of a computer-based nonadaptive licensure assessment. The performance of the proposed method is evaluated by simulation studies.
翻译:本文为同时(双向)探测外围个人和物品以获得物品反应型数据提出了一个新的潜在变量模型。拟议模型是二进制反应和连续反应时间要素模型之间的协同作用,该模型捕捉正常物品反应行为,以及捕捉外围个人和物品的潜在等级模型。根据拟议模型制定了统计决定框架,为控制当地虚假发现/未发现异常检测率提供了复合决定规则。统计推断是在巴耶斯框架下进行的,为此开发了Markov连锁Monte Carlo算法。拟议方法用于通过计算机非适应性熔岩评估案例研究,检测项目渗漏导致的教育测试中的欺骗行为。拟议方法的绩效通过模拟研究进行评估。