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Smoothing and Mean-Covariance Estimation of Functional Data with a Bayesian Hierarchical Model

Authors
Yang, JingjingZhu, HongxiaoChoi, TaeryonCox, Dennis D.
Issue Date
Sep-2016
Publisher
INT SOC BAYESIAN ANALYSIS
Keywords
functional data; smoothing; Bayesian hierarchical model; Gaussian process; Matern covariance function; empirical Bayes
Citation
BAYESIAN ANALYSIS, v.11, no.3, pp.649 - 670
Indexed
SCIE
SCOPUS
Journal Title
BAYESIAN ANALYSIS
Volume
11
Number
3
Start Page
649
End Page
670
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/87613
DOI
10.1214/15-BA967
ISSN
1936-0975
Abstract
Functional data, with basic observational units being functions (e.g., curves, surfaces) varying over a continuum, are frequently encountered in various applications. While many statistical tools have been developed for functional data analysis, the issue of smoothing all functional observations simultaneously is less studied. Existing methods often focus on smoothing each individual function separately, at the risk of removing important systematic patterns common across functions. We propose a nonparametric Bayesian approach to smooth all functional observations simultaneously and nonparametrically. In the proposed approach, we assume that the functional observations are independent Gaussian processes subject to a common level of measurement errors, enabling the borrowing of strength across all observations. Unlike most Gaussian process regression models that rely on pre-specified structures for the covariance kernel, we adopt a hierarchical framework by assuming a Gaussian process prior for the mean function and an Inverse-Wishart process prior for the covariance function. These prior assumptions induce an automatic mean-covariance estimation in the posterior inference in addition to the simultaneous smoothing of all observations. Such a hierarchical framework is flexible enough to incorporate functional data with different characteristics, including data measured on either common or uncommon grids, and data with either stationary or nonstationary covariance structures. Simulations and real data analysis demonstrate that, in comparison with alternative methods, the proposed Bayesian approach achieves better smoothing accuracy and comparable mean-covariance estimation results. Furthermore, it can successfully retain the systematic patterns in the functional observations that are usually neglected by the existing functional data analyses based on individual-curve smoothing.
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