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Bayesian analysis of longitudinal and multidimensional functional data

John Shamshoian, Damla Şentürk, Shafali Jeste, Donatello Telesca

2020Biostatistics21 citationsDOIOpen Access PDF

Abstract

Multi-dimensional functional data arises in numerous modern scientific experimental and observational studies. In this article, we focus on longitudinal functional data, a structured form of multidimensional functional data. Operating within a longitudinal functional framework we aim to capture low dimensional interpretable features. We propose a computationally efficient nonparametric Bayesian method to simultaneously smooth observed data, estimate conditional functional means and functional covariance surfaces. Statistical inference is based on Monte Carlo samples from the posterior measure through adaptive blocked Gibbs sampling. Several operative characteristics associated with the proposed modeling framework are assessed comparatively in a simulated environment. We illustrate the application of our work in two case studies. The first case study involves age-specific fertility collected over time for various countries. The second case study is an implicit learning experiment in children with autism spectrum disorder.

Topics & Concepts

Computer scienceFunctional data analysisCovarianceBayesian probabilityNonparametric statisticsGibbs samplingBayesian inferenceMarkov chain Monte CarloMachine learningInferencePosterior probabilityEconometricsArtificial intelligenceData miningStatisticsMathematicsBayesian Methods and Mixture ModelsStatistical Methods and Bayesian InferenceStatistical Methods and Inference
Bayesian analysis of longitudinal and multidimensional functional data | Litcius