Abstract
We present a flexible Bayesian semiparametric mixed model for longitudinal data analysis in the presence of potentially high-dimensional categorical covariates. Building on a novel hidden Markov tensor decomposition technique, our proposed method allows the fixed effects components to vary between dependent random partitions of the covariate space at different time points. The mechanism not only allows different sets of covariates to be included in the model at different time points but also allows the selected predictors’ influences to vary flexibly over time. Smooth time-varying additive random effects are used to capture subject specific heterogeneity. We establish posterior convergence guarantees for both function estimation and variable selection. We design a Markov chain Monte Carlo algorithm for posterior computation. We evaluate the method’s empirical performances through synthetic experiments and demonstrate its practical utility through real world applications.
Funding Statement
This work was supported in part by National Science Foundation grants DMS 1952679 to Mueller and DMS 1953712 to Sarkar.
Citation
Giorgio Paulon. Peter Müller. Abhra Sarkar. "Bayesian Semiparametric Hidden Markov Tensor Models for Time Varying Random Partitions with Local Variable Selection." Bayesian Anal. 19 (4) 1097 - 1127, December 2024. https://doi.org/10.1214/23-BA1383
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