Approximating Integrals via Monte Carlo and Deterministic Methods

Author:   Michael Evans (Professor of Statistics, Professor of Statistics, University of Toronto) ,  Timothy Swartz (Associate Professor of Statistics, Associate Professor of Statistics, Simon Fraser University)
Publisher:   Oxford University Press
Volume:   20
ISBN:  

9780198502784


Pages:   298
Publication Date:   23 March 2000
Format:   Hardback
Availability:   To order   Availability explained
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Approximating Integrals via Monte Carlo and Deterministic Methods


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Author:   Michael Evans (Professor of Statistics, Professor of Statistics, University of Toronto) ,  Timothy Swartz (Associate Professor of Statistics, Associate Professor of Statistics, Simon Fraser University)
Publisher:   Oxford University Press
Imprint:   Oxford University Press
Volume:   20
Dimensions:   Width: 16.10cm , Height: 2.10cm , Length: 24.10cm
Weight:   0.559kg
ISBN:  

9780198502784


ISBN 10:   0198502788
Pages:   298
Publication Date:   23 March 2000
Audience:   College/higher education ,  Professional and scholarly ,  Postgraduate, Research & Scholarly ,  Professional & Vocational
Format:   Hardback
Publisher's Status:   Active
Availability:   To order   Availability explained
Stock availability from the supplier is unknown. We will order it for you and ship this item to you once it is received by us.

Table of Contents

1: Introduction 2: Some basic tools 3: Algorithms for sampling from distributions 4: Approximating integrals via asymptotics 5: Multiple quadrature 6: Importance sampling 7: Markov Chain methods

Reviews

Evaluating integrals that are not known in closed form is a mathematical problem that occurs with some regularity. Although many techniques exist in the statistical and mathematical literature, a single, clearly written source of information about integral approximation has not been available. For example, there are many volumes devoted to Monte Carlo methods, but these books do not cover deterministic methods. There are numerous examples and exercises in the book, making it a self-contained resource for anyone with a solid background in advanced calculus. This volume should be required reading for graduate students in mathematical statistics and is a recommended reference for scientists whose research requires the evaluation of unknown integrals. -- Richard Chechile, Journal of Mathematical Psychology, 45, 2001 This (hardback) text is ... 'designed to introduce graduate students and researchers to the primary methods used for approximating integrals.' Topics covered include


Evaluating integrals that are not known in closed form is a mathematical problem that occurs with some regularity. Although many techniques exist in the statistical and mathematical literature, a single, clearly written source of information about integral approximation has not been available. For example, there are many volumes devoted to Monte Carlo methods, but these books do not cover deterministic methods. There are numerous examples and exercises in the book, making it a self-contained resource for anyone with a solid background in advanced calculus. This volume should be required reading for graduate students in mathematical statistics and is a recommended reference for scientists whose research requires the evaluation of unknown integrals. -- Richard Chechile, Journal of Mathematical Psychology, 45, 2001<br> This (hardback) text is ... 'designed to introduce graduate students and researchers to the primary methods used for approximating integrals.' Topics covered include methods for sampling from standard distributions, asymptotic approximations, quadrature methods, importance sampling and Markov chain Monte Carlo (MCMC) methods. The text builds upon an earlier review paper ... and makes a valuable contribution to the area by bringing together this broad range of methods, establishing a common notation and comparing and contrasting the different approaches. ... The prose is light and very readable and the mathematics is well motivated and described, with general results presented as theorems. Thus the book is an ideal accompaniment to a relevant course as well as being an excellent reference book for those more familiar with the ideas contained therein. All in all, Iwould consider this book an essential addition to any library concerned with numerical integration techniques. --Biometrics<br> There are few general reference books on multivariate integration, and this one helps to fill such a need. ... The book includes a number of useful examples to illustrate the theory presented. --Mathematical Reviews<br>


Evaluating integrals that are not known in closed form is a mathematical problem that occurs with some regularity. Although many techniques exist in the statistical and mathematical literature, a single, clearly written source of information about integral approximation has not been available. For example, there are many volumes devoted to Monte Carlo methods, but these books do not cover deterministic methods. There are numerous examples and exercises in the book, making it a self-contained resource for anyone with a solid background in advanced calculus. This volume should be required reading for graduate students in mathematical statistics and is a recommended reference for scientists whose research requires the evaluation of unknown integrals. -- Richard Chechile, Journal of Mathematical Psychology, 45, 2001 This (hardback) text is ... 'designed to introduce graduate students and researchers to the primary methods used for approximating integrals.' Topics covered include methods for sampling from standard distributions, asymptotic approximations, quadrature methods, importance sampling and Markov chain Monte Carlo (MCMC) methods. The text builds upon an earlier review paper ... and makes a valuable contribution to the area by bringing together this broad range of methods, establishing a common notation and comparing and contrasting the different approaches. ... The prose is light and very readable and the mathematics is well motivated and described, with general results presented as theorems. Thus the book is an ideal accompaniment to a relevant course as well as being an excellent reference book for those more familiar with the ideas contained therein. All in all, I would consider this book an essential addition to any library concerned with numerical integration techniques. --Biometrics There are few general reference books on multivariate integration, and this one helps to fill such a need. ... The book includes a number of useful examples to illustrate the theory presented. --Mathematical Reviews Evaluating integrals that are not known in closed form is a mathematical problem that occurs with some regularity. Although many techniques exist in the statistical and mathematical literature, a single, clearly written source of information about integral approximation has not been available. For example, there are many volumes devoted to Monte Carlo methods, but these books do not cover deterministic methods. There are numerous examples and exercises in the book, making it a self-contained resource for anyone with a solid background in advanced calculus. This volume should be required reading for graduate students in mathematical statistics and is a recommended reference for scientists whose research requires the evaluation of unknown integrals. -- Richard Chechile, Journal of Mathematical Psychology, 45, 2001 This (hardback) text is ... 'designed to introduce graduate students and researchers to the primary methods used for approximating integrals.' Topics covered include methods for sampling from standard distributions, asymptotic approximations, quadrature methods, importance sampling and Markov chain Monte Carlo (MCMC) methods. The text builds upon an earlier review paper ... and makes a valuable contribution to the area by bringing together this broad range of methods, establishing a common notation and comparing and contrasting the different approaches. ... The prose is light and very readable and the mathematics is well motivated and described, with general results presented as theorems. Thus the book is an ideal accompaniment to a relevant course as well as being an excellent reference book for those more familiar with the ideas contained therein. All in all, Iwould consider this book an essential addition to any library concerned with numerical integration techniques. --Biometrics There are few general reference books on multivariate integration, and this one helps to fill such a need. ... The book includes a number of useful examples to illustrate the theory presented. --Mathematical Reviews Evaluating integrals that are not known in closed form is a mathematical problem that occurs with some regularity. Although many techniques exist in the statistical and mathematical literature, a single, clearly written source of information about integral approximation has not been available. For example, there are many volumes devoted to Monte Carlo methods, but these books do not cover deterministic methods. There are numerous examples and exercises in the book, making it a self-contained resource for anyone with a solid background in advanced calculus. This volume should be required reading for graduate students in mathematical statistics and is a recommended reference for scientists whose research requires the evaluation of unknown integrals. -- Richard Chechile, Journal of Mathematical Psychology, 45, 2001 This (hardback) text is ... 'designed to introduce graduate students and researchers to the primary methods used for approximating integrals.' Topics covered include methods for sampling from standard distributions, asymptotic approximations, quadrature methods, importance sampling and Markov chain Monte Carlo (MCMC) methods. The text builds upon an earlier review paper ... and makes a valuable contribution to the area by bringing together this broad range of methods, establishing a common notation and comparing and contrasting the different approaches. ... The prose is light and very readable and the mathematics is well motivated and described, with general results presented as theorems. Thus the book is an ideal accompaniment to a relevant course as well as being an excellent reference book for those more familiar withthe ideas contained therein. All in all, I would consider this book an essential addition to any library concerned with numerical integration techniques. --Biometrics There are few general reference books on multivariate integration, and this one helps to fill such a need. ... The book includes a number of useful examples to illustrate the theory presented. --Mathematical Reviews Evaluating integrals that are not known in closed form is a mathematical problem that occurs with some regularity. Although many techniques exist in the statistical and mathematical literature, a single, clearly written source of information about integral approximation has not been available. For example, there are many volumes devoted to Monte Carlo methods, but these books do not cover deterministic methods. There are numerous examples and exercises in the book, making it a self-contained resource for anyone with a solid background in advanced calculus. This volume should be required reading for graduate students in mathematical statistics and is a recommended reference for scientists whose research requires the evaluation of unknown integrals. -- Richard Chechile, Journal of Mathematical Psychology, 45, 2001 This (hardback) text is ... 'designed to introduce graduate students and researchers to the primary methods used for approximating integrals.' Topics covered include methods for sampling from standard distributions, asymptotic approximations, quadrature methods, importance sampling and Markov chain Monte Carlo (MCMC) methods. The text builds upon an earlier review paper ... and makes a valuable contribution to the area by bringing together this broad range of methods, establishing a common notation and comparing and contrasting the different approaches. ... The prose is light and very readable and the mathematics is well motivated and described, with general results presented as theorems. Thus the book is an ideal accompaniment to a relevant course as well as being an excellent reference book for those more familiar with the ideas contained therein. All inall, I would consider this book an essential addition to any library concerned with numerical integration techniques. --Biometrics There are few general reference books on multivariate integration, and this one helps to fill such a need. ... The book includes a number of useful examples to illustrate the theory presented. --Mathematical Reviews


<br> Evaluating integrals that are not known in closed form is a mathematical problem that occurs with some regularity. Although many techniques exist in the statistical and mathematical literature, a single, clearly written source of information about integral approximation has not been available. For example, there are many volumes devoted to Monte Carlo methods, but these books do not cover deterministic methods. There are numerous examples and exercises in the book, making it a self-contained resource for anyone with a solid background in advanced calculus. This volume should be required reading for graduate students in mathematical statistics and is a recommended reference for scientists whose research requires the evaluation of unknown integrals. -- Richard Chechile, Journal of Mathematical Psychology, 45, 2001<br> This (hardback) text is ... 'designed to introduce graduate students and researchers to the primary methods used for approximating integrals.' Topics covered include


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