Introduction to stochastic processes using R / Sivaprasad Madhira, Shailaja Deshmukh.
2023
QA274 .M334 2023
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Title
Introduction to stochastic processes using R / Sivaprasad Madhira, Shailaja Deshmukh.
Author
ISBN
9789819956012 (electronic bk.)
9819956013 (electronic bk.)
9819956005
9789819956005
9819956013 (electronic bk.)
9819956005
9789819956005
Published
Singapore : Springer, 2023.
Language
English
Description
1 online resource (651 pages) : illustrations (black and white, and color).
Item Number
10.1007/978-981-99-5601-2 doi
Call Number
QA274 .M334 2023
Dewey Decimal Classification
519.2302855133
Summary
This textbook presents some basic stochastic processes, mainly Markov processes. It begins with a brief introduction to the framework of stochastic processes followed by the thorough discussion on Markov chains, which is the simplest and the most important class of stochastic processes. The book then elaborates the theory of Markov chains in detail including classification of states, the first passage distribution, the concept of periodicity and the limiting behaviour of a Markov chain in terms of associated stationary and long run distributions. The book first illustrates the theory for some typical Markov chains, such as random walk, gambler's ruin problem, Ehrenfest model and Bienayme-Galton-Watson branching process; and then extends the discussion when time parameter is continuous. It presents some important examples of a continuous time Markov chain, which include Poisson process, birth process, death process, birth and death processes and their variations. These processes play a fundamental role in the theory and applications in queuing and inventory models, population growth, epidemiology and engineering systems. The book studies in detail the Poisson process, which is the most frequently applied stochastic process in a variety of fields, with its extension to a renewal process. The book also presents important basic concepts on Brownian motion process, a stochastic process of historic importance. It covers its few extensions and variations, such as Brownian bridge, geometric Brownian motion process, which have applications in finance, stock markets, inventory etc. The book is designed primarily to serve as a textbook for a one semester introductory course in stochastic processes, in a post-graduate program, such as Statistics, Mathematics, Data Science and Finance. It can also be used for relevant courses in other disciplines. Additionally, it provides sufficient background material for studying inference in stochastic processes. The book thus fulfils the need of a concise but clear and student-friendly introduction to various types of stochastic processes.
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Table of Contents
Basics of Stochastic Processes
Markov Chains
Long-run Behaviour of Markov Chains
Random Walks
Bienayme Galton Watson Branching Process
Continuous Time Markov Chains
Poisson Process
Birth and Death Processes
Brownian Motion Process
Renewal Process
Solutions Conceptual Exercises.
Markov Chains
Long-run Behaviour of Markov Chains
Random Walks
Bienayme Galton Watson Branching Process
Continuous Time Markov Chains
Poisson Process
Birth and Death Processes
Brownian Motion Process
Renewal Process
Solutions Conceptual Exercises.