Tu Naidan, Zhang Bo, Angrave Lawrence, Sun Tianjun
University of South Florida, Tampa, FL, USA.
Texas A&M University, College Station, TX, USA.
Appl Psychol Meas. 2021 Oct;45(7-8):553-555. doi: 10.1177/01466216211040488. Epub 2021 Sep 15.
Over the past couple of decades, there has been an increasing interest in adopting ideal point models to represent noncognitive constructs, as they have been demonstrated to better measure typical behaviors than traditional dominance models do. The generalized graded unfolding model () has consistently been the most popular ideal point model among researchers and practitioners. However, the GGUM2004 software and the later developed package in R can only handle unidimensional models despite the fact that many noncognitive constructs are multidimensional in nature. In addition, GGUM2004 and the package often yield unreasonable estimates of item parameters and standard errors. To address these issues, we developed the new open-source R package that is capable of estimating both unidimensional and multidimensional using a fully Bayesian approach, with supporting capabilities of stabilizing parameterization, incorporating person covariates, estimating constrained models, providing fit diagnostics, producing convergence metrics, and effectively handling missing data.
在过去几十年里,采用理想点模型来表示非认知结构的兴趣与日俱增,因为事实证明,与传统的优势模型相比,理想点模型能更好地测量典型行为。广义分级展开模型(GGUM)一直是研究人员和从业者中最受欢迎的理想点模型。然而,GGUM2004软件以及后来在R语言中开发的相关程序包,尽管许多非认知结构本质上是多维的,但它们只能处理单维模型。此外,GGUM2004和该程序包常常会得出不合理的项目参数估计值和标准误差。为了解决这些问题,我们开发了新的开源R程序包,它能够使用全贝叶斯方法估计单维和多维的GGUM,具备稳定参数化、纳入个体协变量、估计约束模型、提供拟合诊断、生成收敛指标以及有效处理缺失数据等支持功能。