Cognitive Diagnosis Models (CDMs) are a powerful statistical and psychometric tool for researchers and practitioners to learn fine-grained diagnostic information about respondents' latent attributes. There has been a growing interest in the use of CDMs for polytomous response data, as more and more items with multiple response options become widely used. Similar to many latent variable models, the identifiability of CDMs is critical for accurate parameter estimation and valid statistical inference. However, the existing identifiability results are primarily focused on binary response models and have not adequately addressed the identifiability of CDMs with polytomous responses. This paper addresses this gap by presenting sufficient and necessary conditions for the identifiability of the widely used DINA model with polytomous responses, with the aim to provide a comprehensive understanding of the identifiability of CDMs with polytomous responses and to inform future research in this field.
翻译:摘要:认知诊断模型(CDMs)是研究人员和实践者学习关于受试者潜在属性的细粒度诊断信息的强大统计和心理测量工具。随着越来越多的带有多个响应选项的问题被广泛使用,对多分类响应数据使用CDMs的兴趣越来越浓厚。类似于许多潜变量模型,CDMs的可识别性对于准确的参数估计和有效的统计推断至关重要。然而,现有的可识别性结果主要关注于二进制响应模型,并且没有充分地解决多分类响应中CDMs的可识别性。本文针对这一差距,提出了广泛使用的DINA模型在多分类响应中的可识别性的充分和必要条件,旨在提供对多分类响应中CDMs的可识别性的全面了解,并为未来研究提供信息。