| Literature DB >> 35089496 |
Chengcheng Li1, Chenchen Ma1, Gongjun Xu2.
Abstract
Estimation of the large Q-matrix in cognitive diagnosis models (CDMs) with many items and latent attributes from observational data has been a huge challenge due to its high computational cost. Borrowing ideas from deep learning literature, we propose to learn the large Q-matrix by restricted Boltzmann machines (RBMs) to overcome the computational difficulties. In this paper, key relationships between RBMs and CDMs are identified. Consistent and robust learning of the Q-matrix in various CDMs is shown to be valid under certain conditions. Our simulation studies under different CDM settings show that RBMs not only outperform the existing methods in terms of learning speed, but also maintain good recovery accuracy of the Q-matrix. In the end, we illustrate the applicability and effectiveness of our method through a TIMSS mathematics data set.Entities:
Keywords: Cognitive diagnosis models; Q-matrix; Restricted Boltzmann machines
Mesh:
Year: 2022 PMID: 35089496 DOI: 10.1007/s11336-021-09828-4
Source DB: PubMed Journal: Psychometrika ISSN: 0033-3123 Impact factor: 2.290