Introduction to the numerical solution of Markov Chains
Language: English Publication details: Princeton University Press 1994 New JerseyDescription: xix, 539pISBN:- 9780691036991
- 519.233 St49i
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PK Kelkar Library, IIT Kanpur | General Stacks | 519.233 St49i (Browse shelf(Opens below)) | Available | A183715 |
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519.233 Se52 v.1 Semi-Markov migration models for credit risk [v.1] | 519.233 Se67 Markov chains | 519.233 Sh23m Markovian queues | 519.233 St49i Introduction to the numerical solution of Markov Chains | 519.233 St89m Multidimensional diffusion processes | 519.233 W488pE Limit theorems on large deviations for Markov stochastic processes | 519.234 Al53s Stochastic population and epidemic models |
A cornerstone of applied probability, Markov chains can be used to help model how plants grow, chemicals react, and atoms diffuse--and applications are increasingly being found in such areas as engineering, computer science, economics, and education. To apply the techniques to real problems, however, it is necessary to understand how Markov chains can be solved numerically. In this book, the first to offer a systematic and detailed treatment of the numerical solution of Markov chains, William Stewart provides scientists on many levels with the power to put this theory to use in the actual world, where it has applications in areas as diverse as engineering, economics, and education. His efforts make for essential reading in a rapidly growing field. Here Stewart explores all aspects of numerically computing solutions of Markov chains, especially when the state is huge. He provides extensive background to both discrete-time and continuous-time Markov chains and examines many different numerical computing methods--direct, single-and multi-vector iterative, and projection methods. More specifically, he considers recursive methods often used when the structure of the Markov chain is upper Hessenberg, iterative aggregation/disaggregation methods that are particularly appropriate when it is NCD (nearly completely decomposable), and reduced schemes for cases in which the chain is periodic. There are chapters on methods for computing transient solutions, on stochastic automata networks, and, finally, on currently available software. Throughout Stewart draws on numerous examples and comparisons among the methods he so thoroughly explains.
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