Latent Class Models (LCMs) are used to cluster multivariate categorical data (e.g. group participants based on survey responses). Traditional LCMs assume a property called conditional independence. This assumption can be restrictive, leading to model misspecification and overparameterization. To combat this problem, we developed a novel Bayesian model called a Dependent Latent Class Model (DLCM), which permits conditional dependence. We verify identifiability of DLCMs. We also demonstrate the effectiveness of DLCMs in both simulations and real-world applications. Compared to traditional LCMs, DLCMs are effective in applications with time series, overlapping items, and structural zeroes.
翻译:液态类模型(LCM)用于分组多变绝对数据(例如,根据调查答复得出的群体参与者);传统的液态内聚物假定一种称为有条件独立的财产;这一假设可能是限制性的,导致模型的区分和过分的参数化;为解决这一问题,我们开发了一种叫作依赖性低级模型(DLCM)的新颖的巴伊西亚模型,允许有条件依赖性;我们核查DLCM的可识别性;我们还表明DLCM在模拟和现实世界应用中的有效性;与传统的液态内聚物相比,DLCM在时间序列、重叠项目和结构零方面是有效的。