
Scalable Monte Carlo for Bayesian Learning
Cambridge University Press
Published on 5. June 2025
Book
Hardback
247 pages
978-1-009-28844-6 (ISBN)
Description
A graduate-level introduction to advanced topics in Markov chain Monte Carlo (MCMC), as applied broadly in the Bayesian computational context. The topics covered have emerged as recently as the last decade and include stochastic gradient MCMC, non-reversible MCMC, continuous time MCMC, and new techniques for convergence assessment. A particular focus is on cutting-edge methods that are scalable with respect to either the amount of data, or the data dimension, motivated by the emerging high-priority application areas in machine learning and AI. Examples are woven throughout the text to demonstrate how scalable Bayesian learning methods can be implemented. This text could form the basis for a course and is sure to be an invaluable resource for researchers in the field.
More details
Series
Language
English
Place of publication
Cambridge
United Kingdom
Illustrations
Worked examples or Exercises
Dimensions
Height: 235 mm
Width: 157 mm
Thickness: 18 mm
Weight
518 gr
ISBN-13
978-1-009-28844-6 (9781009288446)
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Schweitzer Classification
Persons
Author
Lancaster University
Newcastle University
University of Newcastle upon Tyne
Lancaster University
Content
Preface; 1. Background; 2. Reversible MCMC and its Scaling; 3. Stochastic Gradient MCMC Algorithms; 4. Non-Reversible MCMC; 5. Continuous-Time MCMC; 6. Assessing and Improving MCMC; References; Index.