Department of Psychology, University of Minnesota, N658 Elliott Hall, 75 East River Road, Minneapolis, MN, 55455 , USA.
Psychometrika. 2018 Mar;83(1):223-254. doi: 10.1007/s11336-016-9525-x. Epub 2016 Oct 28.
Statistical methods for identifying aberrances on psychological and educational tests are pivotal to detect flaws in the design of a test or irregular behavior of test takers. Two approaches have been taken in the past to address the challenge of aberrant behavior detection, which are (1) modeling aberrant behavior via mixture modeling methods, and (2) flagging aberrant behavior via residual based outlier detection methods. In this paper, we propose a two-stage method that is conceived of as a combination of both approaches. In the first stage, a mixture hierarchical model is fitted to the response and response time data to distinguish normal and aberrant behaviors using Markov chain Monte Carlo (MCMC) algorithm. In the second stage, a further distinction between rapid guessing and cheating behavior is made at a person level using a Bayesian residual index. Simulation results show that the two-stage method yields accurate item and person parameter estimates, as well as high true detection rate and low false detection rate, under different manipulated conditions mimicking NAEP parameters. A real data example is given in the end to illustrate the potential application of the proposed method.
用于识别心理和教育测试异常的统计方法对于检测测试设计中的缺陷或测试参与者的异常行为至关重要。过去有两种方法可以解决异常行为检测的挑战,即 (1) 通过混合建模方法对异常行为进行建模,以及 (2) 通过基于残差的异常检测方法标记异常行为。在本文中,我们提出了一种两阶段方法,该方法被视为两种方法的组合。在第一阶段,使用马尔可夫链蒙特卡罗 (MCMC) 算法拟合响应和响应时间数据的混合层次模型,以区分正常和异常行为。在第二阶段,使用贝叶斯残差指数在个人层面上进一步区分快速猜测和作弊行为。模拟结果表明,在模拟 NAEP 参数的不同操作条件下,两阶段方法可以产生准确的项目和个人参数估计值,以及高真实检测率和低误报率。最后给出了一个真实数据的例子来说明所提出的方法的潜在应用。