1st Edition

Gaussian Process Regression Analysis for Functional Data

By Jian Qing Shi, Taeryon Choi Copyright 2011
    216 Pages 28 B/W Illustrations
    by Chapman & Hall

    Gaussian Process Regression Analysis for Functional Data presents nonparametric statistical methods for functional regression analysis, specifically the methods based on a Gaussian process prior in a functional space. The authors focus on problems involving functional response variables and mixed covariates of functional and scalar variables.

    Covering the basics of Gaussian process regression, the first several chapters discuss functional data analysis, theoretical aspects based on the asymptotic properties of Gaussian process regression models, and new methodological developments for high dimensional data and variable selection. The remainder of the text explores advanced topics of functional regression analysis, including novel nonparametric statistical methods for curve prediction, curve clustering, functional ANOVA, and functional regression analysis of batch data, repeated curves, and non-Gaussian data.

    Many flexible models based on Gaussian processes provide efficient ways of model learning, interpreting model structure, and carrying out inference, particularly when dealing with large dimensional functional data. This book shows how to use these Gaussian process regression models in the analysis of functional data. Some MATLAB® and C codes are available on the first author’s website.

    Introduction
    Functional Regression Models
    Gaussian Process Regression
    Some Data Sets and Associated Statistical Problems

    Bayesian Nonlinear Regression with Gaussian Process Priors
    Gaussian Process Prior and Posterior
    Posterior Consistency
    Asymptotic Properties of the Gaussian Process Regression Models

    Inference and Computation for Gaussian Process Regression Model
    Empirical Bayes Estimates
    Bayesian Inference and MCMC
    Numerical Computation

    Covariance Function and Model Selection
    Examples of Covariance Functions
    Selection of Covariance Functions
    Variable Selection

    Functional Regression Analysis
    Linear Functional Regression Model
    Gaussian Process Functional Regression Model
    GPFR Model with a Linear Functional Mean Model
    Mixed-Effects GPFR Models
    GPFR ANOVA Model

    Mixture Models and Curve Clustering
    Mixture GPR Models
    Mixtures of GPFR Models
    Curve Clustering

    Generalized Gaussian Process Regression for Non-Gaussian Functional Data
    Gaussian Process Binary Regression Model
    Generalized Gaussian Process Regression
    Generalized GPFR Model for Batch Data
    Mixture Models for Multinomial Batch Data

    Some Other Related Models
    Multivariate Gaussian Process Regression Model
    Gaussian Process Latent Variable Models
    Optimal Dynamic Control Using GPR Model
    RKHS and Gaussian Process Regression

    Appendices

    Bibliography

    Index

    Further Reading and Notes appear at the end of each chapter.

    Biography

    Jian Qing Shi, Ph.D., is a senior lecturer in statistics and the leader of the Applied Statistics and Probability Group at Newcastle University. He is a fellow of the Royal Statistical Society and associate editor of the Journal of the Royal Statistical Society (Series C). His research interests encompass functional data analysis using covariance kernel, incomplete data and model uncertainty, and covariance structural analysis and latent variable models.

    Taeryon Choi, Ph.D., is an associate professor of statistics at Korea University. His research mainly focuses on the use of Bayesian methods and theory for various scientific problems.