Elements of the Theory of Markov Processes and Their ApplicationsThis graduate-level text and reference in probability, with numerous applications to several fields of science, presents nonmeasure-theoretic introduction to theory of Markov processes. The work also covers mathematical models based on the theory, employed in various applied fields. Prerequisites are a knowledge of elementary probability theory, mathematical statistics, and analysis. Appendixes. Bibliographies. 1960 edition. |
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... FINITE ELEMENT METHOD , CLAES JOHNSON . ( 0-486-46900 - X ) ADVANCED EUCLIDEAN GEOMETRY , ROGER A. JOHNSON . ( 0-486-46237-4 ) SEE EVERY DOVER BOOK IN PRINT AT WWW.DOVERPUBLICATIONS.COM of Markov Processes and Their Applications A.T. ...
... FINITE ELEMENT METHOD , CLAES JOHNSON . ( 0-486-46900 - X ) ADVANCED EUCLIDEAN GEOMETRY , ROGER A. JOHNSON . ( 0-486-46237-4 ) SEE EVERY DOVER BOOK IN PRINT AT WWW.DOVERPUBLICATIONS.COM of Markov Processes and Their Applications A.T. ...
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... finite number of states should consult , for example , the books of Doob , Feller , Fréchet , Kemeny and Snell , and Romonovskii . While the main purpose of Part I is to present the elements of the theory required for the applications ...
... finite number of states should consult , for example , the books of Doob , Feller , Fréchet , Kemeny and Snell , and Romonovskii . While the main purpose of Part I is to present the elements of the theory required for the applications ...
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... finite or infinite ) represent the results of n independent trials and let E1 , E2 , ... represent the possible outcomes ( states of the system ) at each trial . For i . . . , n let - 1 , 2 , P1 = P { X , = E } j = 1 , 2 ...
... finite or infinite ) represent the results of n independent trials and let E1 , E2 , ... represent the possible outcomes ( states of the system ) at each trial . For i . . . , n let - 1 , 2 , P1 = P { X , = E } j = 1 , 2 ...
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... Finite Markov Chains , " D. Van Nostrand Company , Inc. , Princeton , N.J. , 1960 . 19 Khintchine , A .: " Asymptotische Gesetze der Wahrscheinlichkeitsrechnung , " Springer - Verlag , Berlin , Vienna , 1933 . 20 Kolmogorov , A. N ...
... Finite Markov Chains , " D. Van Nostrand Company , Inc. , Princeton , N.J. , 1960 . 19 Khintchine , A .: " Asymptotische Gesetze der Wahrscheinlichkeitsrechnung , " Springer - Verlag , Berlin , Vienna , 1933 . 20 Kolmogorov , A. N ...
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... finite . By using the method of generating functions , it is relatively simple to determine the moments and cumulants of X1 and X „ , N > 1 . 1 First , we see that differentiation of the generating function F ( s ) with respect to s ...
... finite . By using the method of generating functions , it is relatively simple to determine the moments and cumulants of X1 and X „ , N > 1 . 1 First , we see that differentiation of the generating function F ( s ) with respect to s ...
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Elements of the Theory of Markov Processes and Their Applications Albert T. Bharucha-Reid Limited preview - 1997 |
Common terms and phrases
absorber Acad applications assume assumptions asymptotic birth process birth-and-death process boundary branching processes cascade process cascade theory coefficients collision consider counter defined denote the number denote the probability deterministic differential equation diffusion equations diffusion processes distribution function E₁ E₂ electron-photon cascades epidemic expression Feller finite fluctuation problem functional equation given Hence initial condition integral equation interval 0,t ionization Jánossy Kendall Kolmogorov equations Laplace transform Let the random machine Markov chain Markov processes Math mathematical matrix Mellin transform Messel Monte Carlo methods neutron nucleon nucleon cascades number of individuals o(At obtain P₁ photon Phys Poisson process population probability distribution Proc queueing process queueing system r₁ r₂ radiation Ramakrishnan random variable random variable X(t recurrent satisfies Statist stochastic model Stochastic Processes t₁ t₂ Takács Theorem tion transition probabilities X₁ zero