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Elementary Applications of Probability Theory 2nd edition


Elementary Applications of Probability Theory 2nd edition

Hardback by Tuckwell, Henry C.

Elementary Applications of Probability Theory

WAS £155.00   SAVE £23.25

£131.75

ISBN:
9780412576201
Publication Date:
15 May 1995
Edition/language:
2nd edition / English
Publisher:
Taylor & Francis Ltd
Imprint:
Chapman & Hall/CRC
Pages:
308 pages
Format:
Hardback
For delivery:
Estimated despatch 23 - 28 May 2024
Elementary Applications of Probability Theory

Description

This book provides a clear and straightforward introduction to applications of probability theory with examples given in the biological sciences and engineering. The first chapter contains a summary of basic probability theory. Chapters two to five deal with random variables and their applications. Topics covered include geometric probability, estimation of animal and plant populations, reliability theory and computer simulation. Chapter six contains a lucid account of the convergence of sequences of random variables, with emphasis on the central limit theorem and the weak law of numbers. The next four chapters introduce random processes, including random walks and Markov chains illustrated by examples in population genetics and population growth. This edition also includes two chapters which introduce, in a manifestly readable fashion, the topic of stochastic differential equations and their applications.

Contents

1. A review of basic probability theory 2. Geometric probability 3. Some applications of the hypergeometric and Poisson distributions 4. Reliability theory 5. Simulation and random numbers 6. Convergence of sequences of random variables: The central limit theorem and the laws of large numbers 7. Simple random walks 8. Population genetics and Markov chains 9. Population growth I: Birth and death processes 10. Population Growth II: Branching Processes 11. Stochastic Processes and an Introduction to Stochastic Differential Equations 12. Diffusion processes, stochastic differential equations and applications

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