On generalized latent factor modeling and inference for high-dimensional binomial data

Biometrics(2023)

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摘要
We explore a hierarchical generalized latent factor model for discrete and bounded response variables and in particular, binomial responses. Specifically, we develop a novel two-step estimation procedure and the corresponding statistical inference that is computationally efficient and scalable for the high dimension in terms of both the number of subjects and the number of features per subject. We also establish the validity of the estimation procedure, particularly the asymptotic properties of the estimated effect size and the latent structure, as well as the estimated number of latent factors. The results are corroborated by a simulation study and for illustration, the proposed methodology is applied to analyze a dataset in a gene-environment association study.
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关键词
Discrete bounded data,eigenanalysis,gene-environment association,generalized linear mixed model,sub-Gaussian error
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