Bi-factor and second-order models based on copulas are proposed for item response data, where the items can be split into non-overlapping groups such that there is a homogeneous dependence within each group. Our general models include the Gaussian bi-factor and second-order models as special cases and can lead to more probability in the joint upper or lower tail compared with the Gaussian bi-factor and second-order models. Details on maximum likelihood estimation of parameters for the bi-factor and second-order copula models are given, as well as model selection and goodness-of-fit techniques. Our general methodology is demonstrated with an extensive simulation study and illustrated for the Toronto Alexithymia Scale. Our studies suggest that there can be a substantial improvement over the Gaussian bi-factor and second-order models both conceptually, as the items can have interpretations of latent maxima/minima or mixtures of means in comparison with latent means, and in fit to data.
翻译:在物品反应数据中,提议了基于相交点的双因和二阶模型,其中物品可分为非重叠组,使每个组内具有同质依赖性。我们的一般模型包括高斯双因和二阶模型,作为特例,可导致与高斯双因和二阶模型相比,高斯双因和二阶模型的双尾或下尾联尾的概率更大。提供了双因和二阶组合模型参数的最大可能性估计细节,以及模型选择和适当技术。我们的一般方法通过广泛的模拟研究加以展示,并演示多伦多亚历希米亚比例表。我们的研究表明,与高斯双因和二阶模型相比,在概念上可大大改进高斯双因和二阶模型,因为这些项目可以对潜值/最小值或手段混合物与潜值相比作出解释,并适合数据。