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Handbook Of Markov Chain Monte Carlo 2e – Radu V Craiu (1)

This thoroughly revised and expanded second edition of the Handbook of Markov Chain Mon- te Carlo reflects the dramatic evolution of MCMC methods since the publication of the first edi- tion. With the addition of two new editors, Radu V. Craiu and Dootika Vats, this comprehensive reference now offers deeper insights into the theoretical foundations and cutting-edge develop- ments that are reshaping the field. Key Features: • Completely restructured content with 13 updated chapters from the first edition and ten entirely new chapters reflecting the latest methodological advances • In-depth coverage of recent breakthroughs in multi-modal sampling, intractable likeli- hood problems, and involutive MCMC theory • Comprehensive exploration of unbiased MCMC methods, control variates, and rigor- ous convergence bounds • Practical guidance on implementing MCMC algorithms on modern hardware and software platforms • Cutting-edge material on the integration of MCMC with deep learning and other machine learning approaches • Authoritative treatment of theoretical foundations alongside practical implementation strategies This essential reference serves statisticians, computer scientists, physicists, data scientists, and researchers across disciplines who employ computational methods for Bayesian inference and stochastic simulation.
Graduate students will find it an invaluable learning resource, while expe- rienced practitioners will appreciate its balance of theoretical depth and practical implementa- tion advice. Whether used as a comprehensive guide to current MCMC methodology or as a reference for specific advanced techniques, this handbook provides the definitive resource for anyone working at the intersection of Bayesian computation and modern statistical modeling. Chapman & Hall/CRC Handbooks of Modern Statistical Methods Series Editor Garrett Fitzmaurice, Department of Biostatistics, Harvard School of Public Health, Boston, MA, U.S.A.
The objective of the series is to provide high-quality volumes covering the state-of-the-art in the theory and applications of statistical methodology. The books in the series are thoroughly edited and present comprehensive, coherent, and unified summaries of specific methodological topics from statistics. The chapters are written by the leading researchers in the field and present a good balance of theory and application through a synthesis of the key methodological develop- ments and examples and case studies using real data. Published Titles Handbook of Graphical Models Marloes Maathuis, Mathias Drton, Steffen Lauritzen, and Martin Wainwright Handbook of Mixture Analysis Sylvia Frühwirth-Schnatter, Gilles Celeux, and Christian P. Robert Handbook of Infectious Disease Data Analysis Leonhard Held, Niel Hens, Philip O’Neill, and Jacco Walllinga Handbook of Meta-Analysis Christopher H.
Schmid, Theo Stijnen, and Ian White Handbook of Forensic Statistics David L. Banks, Karen Kafadar, David H. Kaye, and Maria Tackett Handbook of Statistical Methods for Randomized Controlled Trials KyungMann Kim, Frank Bretz, Ying Kuen K. Cheung, and Lisa Hampson Handbook of Measurement Error Models Grace Yi, Aurore Delaigle, and Paul Gustafson Handbook of Multiple Comparisons Xinping Cui, Thorsten Dickhaus, Ying Ding, and Jason C.
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Book Information
- Unique ID: 29cd153aca9ba6b9
- File Extension: .pdf
- File Size: 105,927,358 bytes (101.02 MB)
- Title: –
- Author: Unknown
- ISBN: 9781032591575, 9781032591889, 9781003453420
- Pages: 699
- Language: English (en)
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