Another Look at Conditionally Gaussian Markov Random Fields
Title | Another Look at Conditionally Gaussian Markov Random Fields PDF eBook |
Author | Michael Lavine |
Publisher | |
Pages | 34 |
Release | 1998* |
Genre | Gaussian processes |
ISBN |
Bayesian Statistics 6
Title | Bayesian Statistics 6 PDF eBook |
Author | J. M. Bernardo |
Publisher | Oxford University Press |
Pages | 886 |
Release | 1999-08-12 |
Genre | Mathematics |
ISBN | 9780198504856 |
Bayesian statistics is a dynamic and fast-growing area of statistical research and the Valencia International Meetings provide the main forum for discussion. These resulting proceedings form an up-to-date collection of research.
Gaussian Markov Random Fields
Title | Gaussian Markov Random Fields PDF eBook |
Author | Havard Rue |
Publisher | CRC Press |
Pages | 280 |
Release | 2005-02-18 |
Genre | Mathematics |
ISBN | 0203492021 |
Gaussian Markov Random Field (GMRF) models are most widely used in spatial statistics - a very active area of research in which few up-to-date reference works are available. This is the first book on the subject that provides a unified framework of GMRFs with particular emphasis on the computational aspects. This book includes extensive case-studie
Applied Bayesian Hierarchical Methods
Title | Applied Bayesian Hierarchical Methods PDF eBook |
Author | Peter D. Congdon |
Publisher | CRC Press |
Pages | 606 |
Release | 2010-05-19 |
Genre | Mathematics |
ISBN | 1584887214 |
The use of Markov chain Monte Carlo (MCMC) methods for estimating hierarchical models involves complex data structures and is often described as a revolutionary development. An intermediate-level treatment of Bayesian hierarchical models and their applications, Applied Bayesian Hierarchical Methods demonstrates the advantages of a Bayesian approach
Markov Random Fields
Title | Markov Random Fields PDF eBook |
Author | Y.A. Rozanov |
Publisher | Springer Science & Business Media |
Pages | 207 |
Release | 2012-12-06 |
Genre | Mathematics |
ISBN | 1461381908 |
In this book we study Markov random functions of several variables. What is traditionally meant by the Markov property for a random process (a random function of one time variable) is connected to the concept of the phase state of the process and refers to the independence of the behavior of the process in the future from its behavior in the past, given knowledge of its state at the present moment. Extension to a generalized random process immediately raises nontrivial questions about the definition of a suitable" phase state," so that given the state, future behavior does not depend on past behavior. Attempts to translate the Markov property to random functions of multi-dimensional "time," where the role of "past" and "future" are taken by arbitrary complementary regions in an appro priate multi-dimensional time domain have, until comparatively recently, been carried out only in the framework of isolated examples. How the Markov property should be formulated for generalized random functions of several variables is the principal question in this book. We think that it has been substantially answered by recent results establishing the Markov property for a whole collection of different classes of random functions. These results are interesting for their applications as well as for the theory. In establishing them, we found it useful to introduce a general probability model which we have called a random field. In this book we investigate random fields on continuous time domains. Contents CHAPTER 1 General Facts About Probability Distributions §1.
Bayesian Hierarchical Models
Title | Bayesian Hierarchical Models PDF eBook |
Author | Peter D. Congdon |
Publisher | CRC Press |
Pages | 580 |
Release | 2019-09-16 |
Genre | Mathematics |
ISBN | 1498785913 |
An intermediate-level treatment of Bayesian hierarchical models and their applications, this book demonstrates the advantages of a Bayesian approach to data sets involving inferences for collections of related units or variables, and in methods where parameters can be treated as random collections. Through illustrative data analysis and attention to statistical computing, this book facilitates practical implementation of Bayesian hierarchical methods. The new edition is a revision of the book Applied Bayesian Hierarchical Methods. It maintains a focus on applied modelling and data analysis, but now using entirely R-based Bayesian computing options. It has been updated with a new chapter on regression for causal effects, and one on computing options and strategies. This latter chapter is particularly important, due to recent advances in Bayesian computing and estimation, including the development of rjags and rstan. It also features updates throughout with new examples. The examples exploit and illustrate the broader advantages of the R computing environment, while allowing readers to explore alternative likelihood assumptions, regression structures, and assumptions on prior densities. Features: Provides a comprehensive and accessible overview of applied Bayesian hierarchical modelling Includes many real data examples to illustrate different modelling topics R code (based on rjags, jagsUI, R2OpenBUGS, and rstan) is integrated into the book, emphasizing implementation Software options and coding principles are introduced in new chapter on computing Programs and data sets available on the book’s website
Bayesian Thinking, Modeling and Computation
Title | Bayesian Thinking, Modeling and Computation PDF eBook |
Author | |
Publisher | Elsevier |
Pages | 1062 |
Release | 2005-11-29 |
Genre | Mathematics |
ISBN | 0080461174 |
This volume describes how to develop Bayesian thinking, modelling and computation both from philosophical, methodological and application point of view. It further describes parametric and nonparametric Bayesian methods for modelling and how to use modern computational methods to summarize inferences using simulation. The book covers wide range of topics including objective and subjective Bayesian inferences with a variety of applications in modelling categorical, survival, spatial, spatiotemporal, Epidemiological, software reliability, small area and micro array data. The book concludes with a chapter on how to teach Bayesian thoughts to nonstatisticians. Critical thinking on causal effects Objective Bayesian philosophy Nonparametric Bayesian methodology Simulation based computing techniques Bioinformatics and Biostatistics