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El. knyga: Invariant Probabilities of Transition Functions

  • Formatas: PDF+DRM
  • Serija: Probability and Its Applications
  • Išleidimo metai: 27-Jun-2014
  • Leidėjas: Springer International Publishing AG
  • Kalba: eng
  • ISBN-13: 9783319057231
  • Formatas: PDF+DRM
  • Serija: Probability and Its Applications
  • Išleidimo metai: 27-Jun-2014
  • Leidėjas: Springer International Publishing AG
  • Kalba: eng
  • ISBN-13: 9783319057231

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The structure of the set of all the invariant probabilities and the structure of various types of individual invariant probabilities of a transition function are two topics of significant interest in the theory of transition functions, and are studied in this book. The results obtained are useful in ergodic theory and the theory of dynamical systems, which, in turn, can be applied in various other areas (like number theory). They are illustrated using transition functions defined by flows, semiflows, and one-parameter convolution semigroups of probability measures. In this book, all results on transition probabilities that have been published by the author between 2004 and 2008 are extended to transition functions. The proofs of the results obtained are new.

For transition functions that satisfy very general conditions the book describes an ergodic decomposition that provides relevant information on the structure of the corresponding set of invariant probabilities. Ergodic decomposition means a splitting of the state space, where the invariant ergodic probability measures play a significant role. Other topics covered include: characterizations of the supports of various types of invariant probability measures and the use of these to obtain criteria for unique ergodicity, and the proofs of two mean ergodic theorems for a certain type of transition functions.

The book will be of interest to mathematicians working in ergodic theory, dynamical systems, or the theory of Markov processes. Biologists, physicists and economists interested in interacting particle systems and rigorous mathematics will also find this book a valuable resource. Parts of it are suitable for advanced graduate courses. Prerequisites are basic notions and results on functional analysis, general topology, measure theory, the Bochner integral and some of its applications.

Recenzijos

The book is written with a high precision regarding definitions, notation, symbols and proofs. The book may serve specialists as a comprehensive review of the topic. On the other hand, because it is so clearly written and almost self-contained, it can be recommended as a perfect primer for beginners. The monograph is written for readers searching for an updated guide to functional methods of Markov (discrete- or continuous-time) processes. (Wojciech Bartoszek, Mathematical Reviews, November, 2015)

The present book is designed to provide a useful and complete presentation of the ergodic decomposition for transition functions defined on locally compact separable metric spaces. The book is of great interest not only to research workers in the field of dynamical systems and the theory of Markov processes but also to scientists such asbiologists, physicists, etc. who need relatively straightforward rigorous mathematical methods in their studies and research as well. (Chryssoula Ganatsiou, zbMATH, Vol. 1302, 2015)

1 Preliminaries on Transition Probabilities
1(56)
1.1 Basic Definitions and Results
2(18)
1.2 Invariant Probabilities
20(5)
1.3 The Ergodic Decomposition of Kryloff, Bogoliouboff, Beboutoff and Yosida
25(11)
1.4 Feller Transition Probabilities
36(21)
1.4.1 Supports of Elementary and Ergodic Invariant Measures, Minimality, Unique Ergodicity, and Generic Points
36(9)
1.4.2 Equicontinuity
45(12)
2 Preliminaries on Transition Functions and Their Invariant Probabilities
57(40)
2.1 Transition Functions
57(11)
2.2 Examples
68(21)
2.2.1 Transition Functions Defined by One-Parameter Semigroups or Groups of Measurable Functions: General Considerations
69(3)
2.2.2 Transition Functions Defined by Specific One-Parameter Semigroups or Groups of Measurable Functions
72(11)
2.2.3 Transition Functions Defined by One-Parameter Convolution Semigroups of Probability Measures
83(6)
2.3 Invariant Probability Measures
89(8)
3 Preliminaries on Vector Integrals and Almost Everywhere Convergence
97(48)
3.1 The Bochner and the Dunford-Schwartz Integrals
97(13)
3.1.1 The Bochner Integral
98(4)
3.1.2 Complete Measure Spaces
102(3)
3.1.3 The Dunford-Schwartz Integral
105(5)
3.2 Almost Everywhere Convergence and the Dunford-Schwartz Theorem
110(19)
3.2.1 Pointwise and Almost Everywhere Convergence
110(10)
3.2.2 Semigroups of Operators Defined by Invariant Probabilities, and a Theorem of Dunford and Schwartz
120(9)
3.3 The Pointwise Integral
129(16)
3.3.1 Definitions and Basic Properties
129(9)
3.3.2 An Application: The Existence of Invariant Probabilities for Transition Functions
138(7)
4 Special Topics
145(30)
4.1 Functions Constant Almost Everywhere
145(2)
4.2 Conditional Expectation
147(1)
4.3 Weak Convergence and Continuous-Time Limit Supports
148(9)
4.4 Continuous-Time Banach Limits
157(10)
4.5 The Ascoli-Arzela Theorem
167(3)
4.6 Ordered Vector Spaces and Positive Operators
170(5)
5 The Ergodic Decomposition of Kryloff, Bogoliouboff, Beboutoff and Yosida, Part I
175(24)
5.1 Elementary Measures and Their Role in the Decomposition
176(7)
5.2 The Measurability of D, To, Tc, and Tcpi
183(9)
5.3 Sets of Maximal Probability
192(7)
6 The Ergodic Decomposition of Kryloff, Bogoliouboff, Beboutoff and Yosida, Part II: The Role of the Invariant Ergodic Probability Measures in the Decomposition
199(50)
6.1 Preliminaries on Ergodic Measures
199(19)
6.2 The Invariant Ergodic Probability Measures as Standard Elementary Measures
218(10)
6.3 More About the Set of All Invariant Ergodic Probabilities
228(21)
7 Feller Transition Functions
249(60)
7.1 Elementary Measures and Their Supports
250(17)
7.2 Unique Ergodicity and Related Topics
267(22)
7.2.1 Supports of Invariant Probabilities of Uniquely Ergodic Transition Functions and a Related Topic
267(5)
7.2.2 A Criterion for Unique Ergodicity
272(8)
7.2.3 Generic Points
280(9)
7.3 Mean Ergodic Theorems
289(20)
Appendices
309(66)
A Semiflows and Flows: The Algebraic and Topological Setting, and First Examples
309(26)
A.1 Semigroups, Groups and Coset Spaces
309(6)
A.2 Topologies on Semigroups, Groups and Coset Spaces
315(10)
A.3 Actions, Semiflows and Flows
325(10)
B Invariant Measures, One-Parameter Convolution Semigroups, and Additional Examples of Semiflows and Flows
335(40)
B.1 Invariant Measures
335(14)
B.2 Banach Algebras, Convolutions of Measures, and the Exponential Function
349(12)
B.3 One-Parameter Convolution Semigroups of Probability Measures
361(2)
B.4 Exponential Semiflows and Flows
363(1)
B.4.1 Stochastic Matrices and Semiflows
364(6)
B.4.2 Exponential Flows on Spaces of Cosets of SL(n,R)
370(5)
Bibliography 375(6)
Index 381