Markov Chains and Mixing Times

Markov Chains and Mixing Times

David A. Levin, Yuval Peres, Elizabeth L. Wilmer, James G. Propp, David B. Wilson
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This book is an introduction to the modern theory of Markov chains, whose goal is to determine the rate of convergence to the stationary distribution, as a function of state space size and geometry. This topic has important connections to combinatorics, statistical physics, and theoretical computer science. Many of the techniques presented originate in these disciplines.
The central tools for estimating convergence times, including coupling, strong stationary times, and spectral methods, are developed. The authors discuss many examples, including card shuffling and the Ising model, from statistical mechanics, and present the connection of random walks to electrical networks and apply it to estimate hitting and cover times.
The first edition has been used in courses in mathematics and computer science departments of numerous universities. The second edition features three new chapters (on monotone chains, the exclusion process, and stationary times) and also includes smaller additions and corrections throughout. Updated notes at the end of each chapter inform the reader of recent research developments.
類別:
年:
2017
版本:
Second
出版商:
American Mathematical Society
語言:
english
頁數:
463
ISBN 10:
1470429624
ISBN 13:
9781470429621
ISBN:
2017017451
系列:
MBK/107
文件:
PDF, 16.14 MB
IPFS:
CID , CID Blake2b
english, 2017
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