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Markov Chains with Stationary Transition Probabilities / by Kai Lai Chung ; edited by R. Grammel, F. Hirzebruch, E. Hopf, E. Hopf, H. Maak, W. Magnus, F. K. Schmidt, K. Stein, B. L. van der Waerden
(Grundlehren der mathematischen Wissenschaften, A Series of Comprehensive Studies in Mathematics. ISSN:21969701 ; 104)

Edition 1st ed. 1960.
Publisher (Berlin, Heidelberg : Springer Berlin Heidelberg : Imprint: Springer)
Year 1960
Size X, 278 p. 1 illus : online resource
Authors *Chung, Kai Lai author
Grammel, R editor
Hirzebruch, F editor
Hopf, E editor
Hopf, E editor
Maak, H editor
Magnus, W editor
Schmidt, F. K editor
Stein, K editor
van der Waerden, B. L editor
SpringerLink (Online service)
Subjects LCSH:Probabilities
FREE:Probability Theory
Notes I. Discrete Parameter -- § 1. Fundamental definitions -- § 2. Transition probabilities -- § 3. Classification of states -- § 4. Recurrence -- § 5. Criteria and examples -- § 6. The main limit theorem -- § 7. Various complements -- § 8. Repetitive pattern and renewal process -- § 9. Taboo probabilities -- § 10. The generating function -- § 11. The moments of first entrance time distributions -- § 12. A random walk example -- § 13. System theorems -- § 14. Functionals and associated random variables -- § 15. Ergodic theorems -- § 16. Further limit theorems -- § 17. Almost closed and sojourn sets -- II. Continuous Parameter -- § 1. Transition matrix: basic properties -- § 2. Standard transition matrix -- § 3. Differentiability -- § 4. Definitions and measure-theoretic foundations -- § 5. The sets of constancy -- § 6. Continuity properties of sample functions -- § 7. Further specifications of the process -- § 8. Optional random variable -- § 9. Strong Markov property -- § 10. Classification of states -- § 11. Taboo probability functions -- § 12. Ratio limit theorems -- § 13. Discrete approximations -- § 14. Functionals -- § 15. Post-exit process -- § 16. Imbedded renewal process -- § 17. The two systems of differential equations -- § 18. The minimal solution -- § 19. The first infinity -- § 20 Examples -- Addenda
The theory of Markov chains, although a special case of Markov processes, is here developed for its own sake and presented on its own merits. In general, the hypothesis of a denumerable state space, which is the defining hypothesis of what we call a "chain" here, generates more clear-cut questions and demands more precise and definitive an­ swers. For example, the principal limit theorem (§§ 1. 6, II. 10), still the object of research for general Markov processes, is here in its neat final form; and the strong Markov property (§ 11. 9) is here always applicable. While probability theory has advanced far enough that a degree of sophistication is needed even in the limited context of this book, it is still possible here to keep the proportion of definitions to theorems relatively low. . From the standpoint of the general theory of stochastic processes, a continuous parameter Markov chain appears to be the first essentially discontinuous process that has been studied in some detail. It is common that the sample functions of such a chain have discontinuities worse than jumps, and these baser discontinuities play a central role in the theory, of which the mystery remains to be completely unraveled. In this connection the basic concepts of separability and measurability, which are usually applied only at an early stage of the discussion to establish a certain smoothness of the sample functions, are here applied constantly as indispensable tools
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ISBN 9783642496868

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