
Bayesian Smoothing and Regression for Longitudinal, Spatial and Event History Data
Oxford University Press
1st Edition
Published on 28. April 2011
Book
Hardback
544 pages
978-0-19-953302-2 (ISBN)
Description
Several recent advances in smoothing and semiparametric regression are presented in this book from a unifying, Bayesian perspective. Simulation-based full Bayesian Markov chain Monte Carlo (MCMC) inference, as well as empirical Bayes procedures closely related to penalized likelihood estimation and mixed models, are considered here. Throughout, the focus is on semiparametric regression and smoothing based on basis expansions of unknown functions and effects in combination with smoothness priors for the basis coefficients.
Beginning with a review of basic methods for smoothing and mixed models, longitudinal data, spatial data and event history data are treated in separate chapters. Worked examples from various fields such as forestry, development economics, medicine and marketing are used to illustrate the statistical methods covered in this book. Most of these examples have been analysed using implementations in the Bayesian software, BayesX, and some with R Codes. These, as well as some of the data sets, are made publicly available on the website accompanying this book.
Beginning with a review of basic methods for smoothing and mixed models, longitudinal data, spatial data and event history data are treated in separate chapters. Worked examples from various fields such as forestry, development economics, medicine and marketing are used to illustrate the statistical methods covered in this book. Most of these examples have been analysed using implementations in the Bayesian software, BayesX, and some with R Codes. These, as well as some of the data sets, are made publicly available on the website accompanying this book.
More details
Series
Language
English
Place of publication
Oxford
United Kingdom
Target group
College/higher education
Professional and scholarly
Suitable for graduates, PhD students and their lecturers as a basis, or as additional material, for courses in statistics, biostatistics and econometrics. Also suitable for researchers in applied statistics, quantitative economics, the social sciences and the life sciences.
Illustrations
150 black and white line drawings, 10 black and white half tones
Dimensions
Height: 240 mm
Width: 161 mm
Thickness: 35 mm
Weight
914 gr
ISBN-13
978-0-19-953302-2 (9780199533022)
Copyright in bibliographic data and cover images is held by Nielsen Book Services Limited or by the publishers or by their respective licensors: all rights reserved.
Schweitzer Classification
Persons
Ludwig Fahrmeir is Professor Emeritus, Department of Statistics, Ludwig-Maximilians-University Munich. He has been Professor of Statistics at the University of Regensburg, Chairman of the Collaborative Research Centre "Statistical Analysis of Discrete Structures with Applications in Econometrics and Biometrics" and was coordinator of the project "Analysis and Modelling of Complex Systems in Biology and Medicine" at the University of Munich. He is an Elected Fellow of the International Statistical Institute.
Thomas Kneib received a PhD in Statistics in 2006 from the University of Munich. He has been visiting Professor for Applied Statistics at the University of Ulm and Professor for Statistics at the University of Goettingen. Currently, he is Professor for Applied Statistics at the University of Oldenburg.
Thomas Kneib received a PhD in Statistics in 2006 from the University of Munich. He has been visiting Professor for Applied Statistics at the University of Ulm and Professor for Statistics at the University of Goettingen. Currently, he is Professor for Applied Statistics at the University of Oldenburg.
Author
Department of Statistics, Ludwig Maxmilians University, Munich, Germany
Department of Statistics, Ludwig Maxmilians University, Munich, Germany
Content
1. Introduction: Scope of the Book and Applications ; 2. Basic Concepts for Smoothing and Semiparametric Regression ; 3. Generalised Linear Mixed Models ; 4. Semiparametric Mixed Models for Longitudinal Data ; 5. Spatial Smothing, Interactions and Geoadditive Regression ; 6. Event History Data