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arxiv: 1601.02461 · v1 · pith:A7UNRX7Hnew · submitted 2016-01-11 · 📊 stat.ME

Modeling Multivariate Mixed-Response Functional Data

classification 📊 stat.ME
keywords functionalmultivariatedatalatentdependenceframeworkmodelingprocess
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We propose a Bayesian modeling framework for jointly analyzing multiple functional responses of different types (e.g. binary and continuous data). Our approach is based on a multivariate latent Gaussian process and models the dependence among the functional responses through the dependence of the latent process. Our framework easily accommodates additional covariates. We offer a way to estimate the multivariate latent covariance, allowing for implementation of multivariate functional principal components analysis (FPCA) to specify basis expansions and simplify computation. We demonstrate our method through both simulation studies and an application to real data from a periodontal study.

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