Lu Jing, Zhang Jiwei, Zhang Zhaoyuan, Xu Bao, Tao Jian
Key Laboratory of Applied Statistics of MOE, School of Mathematics and Statistics, Northeast Normal University, Changchun, China.
Key Lab of Statistical Modeling and Data Analysis of Yunnan Province, School of Mathematics and Statistics, Yunnan University, Kunming, China.
Front Psychol. 2021 Aug 11;12:509575. doi: 10.3389/fpsyg.2021.509575. eCollection 2021.
In this paper, a new two-parameter logistic testlet response theory model for dichotomous items is proposed by introducing testlet discrimination parameters to model the local dependence among items within a common testlet. In addition, a highly effective Bayesian sampling algorithm based on auxiliary variables is proposed to estimate the testlet effect models. The new algorithm not only avoids the Metropolis-Hastings algorithm boring adjustment the turning parameters to achieve an appropriate acceptance probability, but also overcomes the dependence of the Gibbs sampling algorithm on the conjugate prior distribution. Compared with the traditional Bayesian estimation methods, the advantages of the new algorithm are analyzed from the various types of prior distributions. Based on the Markov chain Monte Carlo (MCMC) output, two Bayesian model assessment methods are investigated concerning the goodness of fit between models. Finally, three simulation studies and an empirical example analysis are given to further illustrate the advantages of the new testlet effect model and Bayesian sampling algorithm.
本文通过引入测验子区分参数,提出了一种用于二分项目的新的双参数逻辑测验子反应理论模型,以对共同测验子内项目间的局部依赖性进行建模。此外,还提出了一种基于辅助变量的高效贝叶斯抽样算法来估计测验子效应模型。新算法不仅避免了Metropolis-Hastings算法为达到合适的接受概率而对转折参数进行繁琐调整,还克服了吉布斯抽样算法对共轭先验分布的依赖。从各种先验分布类型出发,分析了新算法相较于传统贝叶斯估计方法的优势。基于马尔可夫链蒙特卡罗(MCMC)输出,研究了两种关于模型拟合优度的贝叶斯模型评估方法。最后,给出了三项模拟研究和一个实证例子分析,以进一步说明新测验子效应模型和贝叶斯抽样算法的优势。