Measurement, Statistics and Evaluation (EDMS), Department of Human Development and Quantitative Methodology, University of Maryland.
Psychol Methods. 2017 Jun;22(2):397-408. doi: 10.1037/met0000082. Epub 2016 May 30.
This article explored the application of the posterior predictive model checking (PPMC) method in assessing fit for unidimensional polytomous item response theory (IRT) models, specifically the divide-by-total models (e.g., the generalized partial credit model). Previous research has primarily focused on using PPMC in model checking for unidimensional and multidimensional IRT models for dichotomous data, and has paid little attention to polytomous models. A Monte Carlo simulation was conducted to investigate the performance of PPMC in detecting different sources of misfit for the partial credit model family. Results showed that the PPMC method, in combination with appropriate discrepancy measures, had adequate power in detecting different sources of misfit for the partial credit model family. Global odds ratio and item total correlation exhibited specific patterns in detecting the absence of the slope parameter, whereas Yen's Q1 was found to be promising in the detection of misfit caused by the constant category intersection parameter constraint across items. (PsycINFO Database Record
本文探讨了后验预测模型检查(PPMC)方法在评估一维多项项目反应理论(IRT)模型拟合度中的应用,特别是针对总分划分模型(如广义部分信用模型)。先前的研究主要集中在使用 PPMC 对二项数据的一维和多维 IRT 模型进行模型检查,而对多项模型关注较少。通过蒙特卡罗模拟研究了 PPMC 方法在检测部分信用模型族中不同类型不拟合的表现。结果表明,PPMC 方法结合适当的差异度量,在检测部分信用模型族中不同类型的不拟合方面具有足够的功效。全局优势比和项目总相关显示出在检测斜率参数缺失方面的特定模式,而 Yen 的 Q1 被发现有望检测到由于项目间常数类别交点参数约束引起的不拟合。