Huang Sijia, Luo Jinwen Jevan, Cai Li
Indiana University Bloomington, USA.
University of California, Los Angeles, USA.
Educ Psychol Meas. 2023 Dec;83(6):1229-1248. doi: 10.1177/00131644221140906. Epub 2022 Dec 13.
Random item effects item response theory (IRT) models, which treat both person and item effects as random, have received much attention for more than a decade. The random item effects approach has several advantages in many practical settings. The present study introduced an explanatory multidimensional random item effects rating scale model. The proposed model was formulated under a novel parameterization of the nominal response model (NRM), and allows for flexible inclusion of person-related and item-related covariates (e.g., person characteristics and item features) to study their impacts on the person and item latent variables. A new variant of the Metropolis-Hastings Robbins-Monro (MH-RM) algorithm designed for latent variable models with crossed random effects was applied to obtain parameter estimates for the proposed model. A preliminary simulation study was conducted to evaluate the performance of the MH-RM algorithm for estimating the proposed model. Results indicated that the model parameters were well recovered. An empirical data set was analyzed to further illustrate the usage of the proposed model.
随机项目效应的项目反应理论(IRT)模型将人和项目效应都视为随机的,十多年来一直备受关注。随机项目效应方法在许多实际应用中具有若干优势。本研究引入了一种解释性多维随机项目效应评定量表模型。所提出的模型是在名义反应模型(NRM)的一种新颖参数化下制定的,并允许灵活纳入与人和项目相关的协变量(例如,个体特征和项目特征),以研究它们对人和项目潜在变量的影响。为具有交叉随机效应的潜在变量模型设计的一种新的Metropolis-Hastings Robbins-Monro(MH-RM)算法变体被用于获得所提出模型的参数估计。进行了一项初步模拟研究以评估MH-RM算法估计所提出模型的性能。结果表明模型参数得到了很好的恢复。分析了一个实证数据集以进一步说明所提出模型的用法。