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A Joint MLE Approach to Large-Scale Structured Latent Attribute Analysis

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journal contribution
posted on 2021-07-16, 13:20 authored by Yuqi Gu, Gongjun Xu

Structured latent attribute models (SLAMs) are a family of discrete latent variable models widely used in education, psychology, and epidemiology to model multivariate categorical data. A SLAM assumes that multiple discrete latent attributes explain the dependence of observed variables in a highly structured fashion. Usually, the maximum marginal likelihood estimation approach is adopted for SLAMs, treating the latent attributes as random effects. The increasing scope of modern assessment data involves large numbers of observed variables and high-dimensional latent attributes. This poses challenges to classical estimation methods and requires new methodology and understanding of latent variable modeling. Motivated by this, we consider the joint maximum likelihood estimation (MLE) approach to SLAMs, treating latent attributes as fixed unknown parameters. We investigate estimability, consistency, and computation in the regime where sample size, number of variables, and number of latent attributes all can diverge. We establish the statistical consistency of the joint MLE and propose efficient algorithms that scale well to large-scale data for several popular SLAMs. Simulation studies demonstrate the superior empirical performance of the proposed methods. An application to real data from an international educational assessment gives interpretable findings of cognitive diagnosis.

Funding

This research was supported by NSF CAREER SES-1846747, DMS-1712717, SES-1659328, and also by NIH NIEHS R01ES027498, R01ES028804. This research has also received funding from the European Research Council under the European Union’s Horizon 2020 research and innovation program (grant agreement No 856506).

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