School of Mathematics and Statistics, KLAS, Northeast Normal University, Changchun, Jilin, China.
Department of Statistics, University of Michigan, Ann Arbor, Michigan, USA.
Br J Math Stat Psychol. 2020 Nov;73 Suppl 1:51-82. doi: 10.1111/bmsp.12185. Epub 2019 Sep 25.
The four-parameter logistic model (4PLM) has recently attracted much interest in various applications. Motivated by recent studies that re-express the four-parameter model as a mixture model with two levels of latent variables, this paper develops a new expectation-maximization (EM) algorithm for marginalized maximum a posteriori estimation of the 4PLM parameters. The mixture modelling framework of the 4PLM not only makes the proposed EM algorithm easier to implement in practice, but also provides a natural connection with popular cognitive diagnosis models. Simulation studies were conducted to show the good performance of the proposed estimation method and to investigate the impact of the additional upper asymptote parameter on the estimation of other parameters. Moreover, a real data set was analysed using the 4PLM to show its improved performance over the three-parameter logistic model.
四参数逻辑模型(4PLM)最近在各种应用中引起了广泛关注。受最近将四参数模型重新表述为具有两个层次潜在变量的混合模型的研究的启发,本文提出了一种新的期望最大化(EM)算法,用于边际最大后验估计 4PLM 参数。4PLM 的混合建模框架不仅使所提出的 EM 算法在实践中更容易实现,而且还与流行的认知诊断模型建立了自然联系。通过仿真研究表明了所提出的估计方法的良好性能,并研究了附加上限参数对其他参数估计的影响。此外,还使用 4PLM 分析了一个真实数据集,以显示其在性能上优于三参数逻辑模型。