| Literature DB >> 23926363 |
Jingchen Liu1, Gongjun Xu, Zhiliang Ying.
Abstract
The recent surge of interests in cognitive assessment has led to developments of novel statistical models for diagnostic classification. Central to many such models is the well-known Q-matrix, which specifies the item-attribute relationships. This article proposes a data-driven approach to identification of the Q-matrix and estimation of related model parameters. A key ingredient is a flexible T-matrix that relates the Q-matrix to response patterns. The flexibility of the T-matrix allows the construction of a natural criterion function as well as a computationally amenable algorithm. Simulations results are presented to demonstrate usefulness and applicability of the proposed method. Extension to handling of the Q-matrix with partial information is presented. The proposed method also provides a platform on which important statistical issues, such as hypothesis testing and model selection, may be formally addressed.Entities:
Keywords: DINA model; cognitive diagnosis; latent traits; model selection; multidimensionality; optimization; self-learning; statistical estimation
Year: 2012 PMID: 23926363 PMCID: PMC3733574 DOI: 10.1177/0146621612456591
Source DB: PubMed Journal: Appl Psychol Meas ISSN: 0146-6216