Lecture Notes On Limit Theorems For Markov Chain Transition Probability Functions


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Lecture Notes on Limit Theorems for Markov Chain Transition Probability Functions


Lecture Notes on Limit Theorems for Markov Chain Transition Probability Functions

Author: Steven Orey

language: en

Publisher:

Release Date: 1968


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Lecture Notes on Limit Theorems for Markov Chain Transition Probabilities


Lecture Notes on Limit Theorems for Markov Chain Transition Probabilities

Author: Steven Orey

language: en

Publisher:

Release Date: 1971


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Local Limit Theorems for Inhomogeneous Markov Chains


Local Limit Theorems for Inhomogeneous Markov Chains

Author: Dmitry Dolgopyat

language: en

Publisher: Springer Nature

Release Date: 2023-07-31


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This book extends the local central limit theorem to Markov chains whose state spaces and transition probabilities are allowed to change in time. Such chains are used to model Markovian systems depending on external time-dependent parameters. The book develops a new general theory of local limit theorems for additive functionals of Markov chains, in the regimes of local, moderate, and large deviations, and provides nearly optimal conditions for the classical expansions, as well as asymptotic corrections when these conditions fail. Applications include local limit theorems for independent but not identically distributed random variables, Markov chains in random environments, and time-dependent perturbations of homogeneous Markov chains. The inclusion of appendices with background material, numerous examples, and an account of the historical background of the subject make this self-contained book accessible to graduate students. It will also be useful for researchers in probability and ergodic theory who are interested in asymptotic behaviors, Markov chains in random environments, random dynamical systems and non-stationary systems.