Atnaujinkite slapukų nuostatas

El. knyga: Stationary Processes and Discrete Parameter Markov Processes

  • Formatas: EPUB+DRM
  • Serija: Graduate Texts in Mathematics 293
  • Išleidimo metai: 01-Dec-2022
  • Leidėjas: Springer International Publishing AG
  • Kalba: eng
  • ISBN-13: 9783031009433
Kitos knygos pagal šią temą:
  • Formatas: EPUB+DRM
  • Serija: Graduate Texts in Mathematics 293
  • Išleidimo metai: 01-Dec-2022
  • Leidėjas: Springer International Publishing AG
  • Kalba: eng
  • ISBN-13: 9783031009433
Kitos knygos pagal šią temą:

DRM apribojimai

  • Kopijuoti:

    neleidžiama

  • Spausdinti:

    neleidžiama

  • El. knygos naudojimas:

    Skaitmeninių teisių valdymas (DRM)
    Leidykla pateikė šią knygą šifruota forma, o tai reiškia, kad norint ją atrakinti ir perskaityti reikia įdiegti nemokamą programinę įrangą. Norint skaityti šią el. knygą, turite susikurti Adobe ID . Daugiau informacijos  čia. El. knygą galima atsisiųsti į 6 įrenginius (vienas vartotojas su tuo pačiu Adobe ID).

    Reikalinga programinė įranga
    Norint skaityti šią el. knygą mobiliajame įrenginyje (telefone ar planšetiniame kompiuteryje), turite įdiegti šią nemokamą programėlę: PocketBook Reader (iOS / Android)

    Norint skaityti šią el. knygą asmeniniame arba „Mac“ kompiuteryje, Jums reikalinga  Adobe Digital Editions “ (tai nemokama programa, specialiai sukurta el. knygoms. Tai nėra tas pats, kas „Adobe Reader“, kurią tikriausiai jau turite savo kompiuteryje.)

    Negalite skaityti šios el. knygos naudodami „Amazon Kindle“.

This textbook explores two distinct stochastic processes that evolve at random: weakly stationary processes and discrete parameter Markov processes. Building from simple examples, the authors focus on developing context and intuition before formalizing the theory of each topic. This inviting approach illuminates the key ideas and computations in the proofs, forming an ideal basis for further study.





After recapping the essentials from Fourier analysis, the book begins with an introduction to the spectral representation of a stationary process. Topics in ergodic theory follow, including Birkhoffs Ergodic Theorem and an introduction to dynamical systems. From here, the Markov property is assumed and the theory of discrete parameter Markov processes is explored on a general state space. Chapters cover a variety of topics, including birthdeath chains, hitting probabilities and absorption, the representation of Markov processes as iterates of random maps, and large deviation theory for Markov processes. A chapter on geometric rates of convergence to equilibrium includes a splitting condition that captures the recurrence structure of certain iterated maps in a novel way. A selection of special topics concludes the book, including applications of large deviation theory, the FKG inequalities, coupling methods, and the Kalman filter.





Featuring many short chapters and a modular design, this textbook offers an in-depth study of stationary and discrete-time Markov processes. Students and instructors alike will appreciate the accessible, example-driven approach and engaging exercises throughout. A single, graduate-level course in probability is assumed.

Recenzijos

"The book is an advanced level measure theoretic probability book. ... The book is an impressive presentation of material, including a huge variety of topics in probability. Because of the wealth of subjects, there is an abundance of possible research topics waiting to challenge new (or experienced) probability experts. This book would be an excellent text for an advanced probability course, and is certainly a valuable reference for those interested in the exciting field of probability." (Myron Hlynka, Mathematical Reviews, March, 2025)

1 Fourier Analysis: A Brief Survey
1(4)
Exercises
4(1)
2 Weakly Stationary Processes and Their Spectral Measures
5(16)
Exercises
17(4)
3 Spectral Representation of Stationary Processes
21(38)
Exercises
53(6)
4 Birkhoff's Ergodic Theorem
59(12)
Exercises
67(4)
5 Subadditive Ergodic Theory
71(10)
Exercises
78(3)
6 An Introduction to Dynamical Systems
81(16)
Exercises
93(4)
7 Markov Chains
97(10)
Exercises
102(5)
8 Markov Processes with General State Space
107(20)
Exercises
124(3)
9 Stopping Times and the Strong Markov Property
127(8)
Exercises
131(4)
10 Transience and Recurrence of Markov Chains
135(14)
Exercises
144(5)
11 Birth--Death Chains
149(18)
Exercises
163(4)
12 Hitting Probabilities & Absorption
167(16)
Exercises
178(5)
13 Law of Large Numbers and Invariant Probability for Markov Chains by Renewal Decomposition
183(12)
Exercises
191(4)
14 The Central Limit Theorem for Markov Chains by Renewal Decomposition
195(6)
Exercises
198(3)
15 Martingale Central Limit Theorem
201(14)
Exercises
213(2)
16 Stationary Ergodic Markov Processes: SLLN & FCLT
215(10)
Exercises
223(2)
17 Linear Markov Processes
225(12)
Exercises
233(4)
18 Markov Processes Generated by Iterations of I.I.D. Maps
237(18)
Exercises
252(3)
19 A Splitting Condition and Geometric Rates of Convergence to Equilibrium
255(32)
Exercises
283(4)
20 Irreducibility and Harris Recurrent Markov Processes
287(22)
Exercises
307(2)
21 An Extended Perron--Frobenius Theorem and Large Deviation Theory for Markov Processes
309(36)
Exercises
339(6)
22 Special Topic: Applications of Large Deviation Theory
345(16)
Exercises
360(1)
23 Special Topic: Associated Random Fields, Positive Dependence, FKG Inequalities
361(22)
Exercises
379(4)
24 Special Topic: More on Coupling Methods and Applications
383(16)
Exercises
397(2)
25 Special Topic: An Introduction to Kalman Filter
399(28)
Exercises
404(3)
A Spectral Theorem for Compact Self-Adjoint Operators and Mercer's Theorem
407(8)
B Spectral Theorem for Bounded Self-Adjoint Operators
415(4)
C Borel Equivalence for Polish Spaces
419(2)
D Hahn-Banach, Separation, and Representation Theorems in Functional Analysis
421(6)
References 427(8)
Related Textbooks and Monographs 435(4)
Author Index 439(4)
Subject Index 443
Rabi Bhattacharya is Professor of Mathematics at The University of Arizona. He is a Fellow of the Institute of Mathematical Statistics and a recipient of the U.S. Senior Scientist Humboldt Award and of a Guggenheim Fellowship. He has made significant contributions to the theory and application of Markov processes, and more recently, nonparametric statistical inference on manifolds. He has served on editorial boards of many international journals and has published several research monographs and graduate texts on probability and statistics.





Edward C. Waymire is Emeritus Professor of Mathematics at Oregon State University. He received a PhD in mathematics from the University of Arizona in the theory of interacting particle systems. His primary research concerns applications of probability and stochastic processes to problems of contemporary applied mathematics pertaining to various types of flows, dispersion, and random disorder. He is a former chief editor of the Annals of Applied Probability, and past president of the Bernoulli Society for Mathematical Statistics and Probability.





Both authors have co-authored numerous books, including A Basic Course in Probability Theory, which is an ideal companion to the current volume.