Klein Entink R H, Fox J-P, van der Linden W J
Department of Research Methodology, Measurement and Data Analysis, University of Twente, P.O. Box 217, 7500 AE Enschede, The Netherlands.
Psychometrika. 2009 Mar;74(1):21-48. doi: 10.1007/s11336-008-9075-y. Epub 2008 Aug 23.
Response times on test items are easily collected in modern computerized testing. When collecting both (binary) responses and (continuous) response times on test items, it is possible to measure the accuracy and speed of test takers. To study the relationships between these two constructs, the model is extended with a multivariate multilevel regression structure which allows the incorporation of covariates to explain the variance in speed and accuracy between individuals and groups of test takers. A Bayesian approach with Markov chain Monte Carlo (MCMC) computation enables straightforward estimation of all model parameters. Model-specific implementations of a Bayes factor (BF) and deviance information criterium (DIC) for model selection are proposed which are easily calculated as byproducts of the MCMC computation. Both results from simulation studies and real-data examples are given to illustrate several novel analyses possible with this modeling framework.
在现代计算机化测试中,很容易收集测试项目的反应时间。当同时收集测试项目的(二元)反应和(连续)反应时间时,就可以测量考生的准确性和速度。为了研究这两个结构之间的关系,该模型通过多元多级回归结构进行了扩展,该结构允许纳入协变量来解释个体和考生群体之间速度和准确性的差异。采用马尔可夫链蒙特卡罗(MCMC)计算的贝叶斯方法能够直接估计所有模型参数。提出了用于模型选择的贝叶斯因子(BF)和偏差信息准则(DIC)的特定于模型的实现方式,它们很容易作为MCMC计算的副产品进行计算。给出了模拟研究和实际数据示例的结果,以说明使用此建模框架可能进行的几种新颖分析。