Back to Search Start Over

A latent topic model with Markov transition for process data

Authors :
Haochen Xu
Guanhua Fang
Zhiliang Ying
Source :
British Journal of Mathematical and Statistical Psychology. 73:474-505
Publication Year :
2020
Publisher :
Wiley, 2020.

Abstract

We propose a latent topic model with a Markov transition for process data, which consists of time-stamped events recorded in a log file. Such data are becoming more widely available in computer-based educational assessment with complex problem-solving items. The proposed model can be viewed as an extension of the hierarchical Bayesian topic model with a hidden Markov structure to accommodate the underlying evolution of an examinee's latent state. Using topic transition probabilities along with response times enables us to capture examinees' learning trajectories, making clustering/classification more efficient. A forward-backward variational expectation-maximization (FB-VEM) algorithm is developed to tackle the challenging computational problem. Useful theoretical properties are established under certain asymptotic regimes. The proposed method is applied to a complex problem-solving item in the 2012 version of the Programme for International Student Assessment (PISA).

Details

ISSN :
20448317 and 00071102
Volume :
73
Database :
OpenAIRE
Journal :
British Journal of Mathematical and Statistical Psychology
Accession number :
edsair.doi.dedup.....a44efb249f58be2271f6c947e615f1fb