Markov chains /
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Author / Creator: | Douc, Randal, author. |
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Imprint: | Cham, Switzerland : Springer, 2018. |
Description: | 1 online resource (xviii, 757 pages) : illustrations (some color). |
Language: | English |
Series: | Springer series in operations research and financial engineering, 1431-8598 Springer series in operations research, |
Subject: | |
Format: | E-Resource Book |
URL for this record: | http://pi.lib.uchicago.edu/1001/cat/bib/11761646 |
Table of Contents:
- Part I Foundations
- Markov Chains: Basic Definitions
- Examples of Markov Chains
- Stopping Times and the Strong Markov Property
- Martingales, Harmonic Functions and Polsson-Dirichlet Problems
- Ergodic Theory for Markov Chains
- Part II Irreducible Chains: Basics
- Atomic Chains
- Markov Chains on a Discrete State Space
- Convergence of Atomic Markov Chains
- Small Sets, Irreducibility and Aperiodicity
- Transience, Recurrence and Harris Recurrence
- Splitting Construction and Invariant Measures
- Feller and T-kernels
- Part III Irreducible Chains: Advanced Topics
- Rates of Convergence for Atomic Markov Chains
- Geometric Recurrence and Regularity
- Geometric Rates of Convergence
- (f, r)-recurrence and Regularity
- Subgeometric Rates of Convergence
- Uniform and V-geometric Ergodicity by Operator Methods
- Coupling for Irreducible Kernels
- Part IV Selected Topics
- Convergence in the Wasserstein Distance
- Central Limit Theorems
- Spectral Theory
- Concentration Inequalities
- Appendices
- A Notations
- B Topology, Measure, and Probability
- C Weak Convergence
- D Total and V-total Variation Distances
- E Martingales
- F Mixing Coefficients
- G Solutions to Selected Exercises.