Bayesian Regression Modeling with INLA Bayesian Regression Modeling with INLA
Chapman & Hall/CRC Computer Science & Data Analysis

Bayesian Regression Modeling with INLA

Xiaofeng Wang and Others
    • ¥9,400
    • ¥9,400

Publisher Description

INLA stands for Integrated Nested Laplace Approximations, which is a new method for fitting a broad class of Bayesian regression models. No samples of the posterior marginal distributions need to be drawn using INLA, so it is a computationally convenient alternative to Markov chain Monte Carlo (MCMC), the standard tool for Bayesian inference.

Bayesian Regression Modeling with INLA covers a wide range of modern regression models and focuses on the INLA technique for building Bayesian models using real-world data and assessing their validity. A key theme throughout the book is that it makes sense to demonstrate the interplay of theory and practice with reproducible studies. Complete R commands are provided for each example, and a supporting website holds all of the data described in the book. An R package including the data and additional functions in the book is available to download.

The book is aimed at readers who have a basic knowledge of statistical theory and Bayesian methodology. It gets readers up to date on the latest in Bayesian inference using INLA and prepares them for sophisticated, real-world work.

Xiaofeng Wang is Professor of Medicine and Biostatistics at the Cleveland Clinic Lerner College of Medicine of Case Western Reserve University and a Full Staff in the Department of Quantitative Health Sciences at Cleveland Clinic.

Yu Ryan Yue is Associate Professor of Statistics in the Paul H. Chook Department of Information Systems and Statistics at Baruch College, The City University of New York.

Julian J. Faraway is Professor of Statistics in the Department of Mathematical Sciences at the University of Bath.

GENRE
Science & Nature
RELEASED
2018
January 29
LANGUAGE
EN
English
LENGTH
324
Pages
PUBLISHER
CRC Press
SELLER
Taylor & Francis Group
SIZE
28.6
MB
Bayesian Statistical Methods Bayesian Statistical Methods
2019
Handbook of Bayesian Variable Selection Handbook of Bayesian Variable Selection
2021
Nonlinear Models for Repeated Measurement Data Nonlinear Models for Repeated Measurement Data
2017
Computer Intensive Statistical Methods Computer Intensive Statistical Methods
2017
Introduction to Bayesian Estimation and Copula Models of Dependence Introduction to Bayesian Estimation and Copula Models of Dependence
2017
Industrial Data Analytics for Diagnosis and Prognosis Industrial Data Analytics for Diagnosis and Prognosis
2021
Semisupervised Learning for Computational Linguistics Semisupervised Learning for Computational Linguistics
2007
Foundations of Statistical Algorithms Foundations of Statistical Algorithms
2013
Design and Modeling for Computer Experiments Design and Modeling for Computer Experiments
2005
Time Series Clustering and Classification Time Series Clustering and Classification
2019
Combinatorial Inference in Geometric Data Analysis Combinatorial Inference in Geometric Data Analysis
2019
Textual Data Science with R Textual Data Science with R
2019