Introduction to hidden semi-Markov models / John van der Hoek (University of South Australia), Robert J. Elliott (University of Calgary).
Van der Hoek, John| Call Number | 519.2/33 |
| Author | Van der Hoek, John, author. |
| Title | Introduction to hidden semi-Markov models / John van der Hoek (University of South Australia), Robert J. Elliott (University of Calgary). |
| Physical Description | 1 online resource (x, 174 pages) : digital, PDF file(s). |
| Series | London Mathematical Society lecture note series ; 445 |
| Notes | Title from publisher's bibliographic system (viewed on 12 Feb 2018). |
| Summary | Markov chains and hidden Markov chains have applications in many areas of engineering and genomics. This book provides a basic introduction to the subject by first developing the theory of Markov processes in an elementary discrete time, finite state framework suitable for senior undergraduates and graduates. The authors then introduce semi-Markov chains and hidden semi-Markov chains, before developing related estimation and filtering results. Genomics applications are modelled by discrete observations of these hidden semi-Markov chains. This book contains new results and previously unpublished material not available elsewhere. The approach is rigorous and focused on applications. |
| Added Author | Elliott, Robert J. 1940- author. |
| Subject | MARKOV PROCESSES. Hidden Markov models. STOCHASTIC PROCESSES. |
| Multimedia |
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| Summary | Markov chains and hidden Markov chains have applications in many areas of engineering and genomics. This book provides a basic introduction to the subject by first developing the theory of Markov processes in an elementary discrete time, finite state framework suitable for senior undergraduates and graduates. The authors then introduce semi-Markov chains and hidden semi-Markov chains, before developing related estimation and filtering results. Genomics applications are modelled by discrete observations of these hidden semi-Markov chains. This book contains new results and previously unpublished material not available elsewhere. The approach is rigorous and focused on applications. |
| Notes | Title from publisher's bibliographic system (viewed on 12 Feb 2018). |
| Subject | MARKOV PROCESSES. Hidden Markov models. STOCHASTIC PROCESSES. |
| Multimedia |