Monte Carlo Strategies in Scientific Computing (Springer Series in Statistics) | 
enlarge | Author: Jun S. Liu Publisher: Springer Category: Book
List Price: $49.95 Buy New: $37.43 You Save: $12.52 (25%)
New (22) Used (7) from $37.43
Rating: 4 reviews Sales Rank: 215840
Media: Paperback Pages: 346 Number Of Items: 1 Shipping Weight (lbs): 0.9 Dimensions (in): 9.2 x 6.1 x 0.7
ISBN: 0387763694 Dewey Decimal Number: 519 EAN: 9780387763699
Publication Date: January 4, 2008 Availability: Usually ships in 1-2 business days
| |
| Similar Items:
|
| Editorial Reviews:
Product Description
This paperback edition is a reprint of the 2001 Springer edition. This book provides a self-contained and up-to-date treatment of the Monte Carlo method and develops a common framework under which various Monte Carlo techniques can be "standardized" and compared. Given the interdisciplinary nature of the topics and a moderate prerequisite for the reader, this book should be of interest to a broad audience of quantitative researchers such as computational biologists, computer scientists, econometricians, engineers, probabilists, and statisticians. It can also be used as the textbook for a graduate-level course on Monte Carlo methods. Many problems discussed in the alter chapters can be potential thesis topics for masters’ or Ph.D. students in statistics or computer science departments. Jun Liu is Professor of Statistics at Harvard University, with a courtesy Professor appointment at Harvard Biostatistics Department. Professor Liu was the recipient of the 2002 COPSS Presidents' Award, the most prestigious one for statisticians and given annually by five leading statistical associations to one individual under age 40. He was selected as a Terman Fellow by Stanford University in 1995, as a Medallion Lecturer by the Institute of Mathematical Statistics (IMS) in 2002, and as a Bernoulli Lecturer by the International Bernoulli Society in 2004. He was elected to the IMS Fellow in 2004 and Fellow of the American Statistical Association in 2005. He and co-workers have published more than 130 research articles and book chapters on Bayesian modeling and computation, bioinformatics, genetics, signal processing, stochastic dynamic systems, Monte Carlo methods, and theoretical statistics. "An excellent survey of current Monte Carlo methods. The applications amply demonstrate the relevance of this approach to modern computing. The book is highly recommended." (Mathematical Reviews) "This book provides comprehensive coverage of Monte Carlo methods, and in the process uncovers and discusses commonalities among seemingly disparate techniques that arose in various areas of application. … The book is well organized; the flow of topics follows a logical development. … The coverage is up-to-date and comprehensive, and so the book is a good resource for people conducting research on Monte Carlo methods. … The book would be an excellent supplementary text for a course in scientific computing … ." (SIAM Review) "The strength of this book is in bringing together advanced Monte Carlo (MC) methods developed in many disciplines. … Throughout the book are examples of techniques invented, or reinvented, in different fields that may be applied elsewhere. … Those interested in using MC to solve difficult problems will find many ideas, collected from a variety of disciplines, and references for further study." (Technometrics)
|
| Customer Reviews:
An excellent book on Monte Carlo May 3, 2006 Reader in Statistics (Rochester, NY) 13 out of 15 found this review helpful
Jun Liu has been a prominent researcher in MCMC since the mid 90's. His research has contributed a great deal to the development of Gibbs sampler, sequential Monte Carlo, weighting/importance sampling, missing data, and MCMC related applications in Bioinformatics. Not surprisingly, this book has them all, plus many other interesting topics. The final two chapters review some of the theories. This book has a strong flavor in statistical physics, which I like very much. It also contains some applications in, for examples, engineering (e.g. nonlinear filter, sequential Monte Carlo), biology (DNA sequencing), image analysis (clustering) and stochastic optimization. Jun Liu presents things very clearly and concisely, and hopefully you can benefit from his book.
A First Rate Book on MC August 7, 2001 32 out of 46 found this review helpful
The author is a top young gun from Harvard's Statistics Dept., and is an expert in many applied areas that utilize Monte Carlo, like the red hot bioinformatics. This book covers MC techniques developed in many different fields e.g., physics,structural biology, statistics. It has a wide range of examples, some of which are very new (e.g., bioinformatics) and non-standard. It contains many interesting ideas, and is concise mathematically and easy to read. Highly recommended.
Solid theory in Monte Carlo, but less application examples August 21, 2005 Jingru Chen (Connecticut, USA) 5 out of 13 found this review helpful
Solid theory in Monte Carlo, but less application examples
An awesome book on Monte Carlo methods September 13, 2005 supercutepig (USA) 2 out of 9 found this review helpful
Now, I am reading this book. I would like to mark it 4.5 stars if possible. [1] The author is an expert of computational statistics and Bayesian analysis, an active mathematician at Harvard. [2] The background of this book is related to bioinformatics, physics, etc, which puzzles me a lot while reading. [3] You can find the author's deep understanding of MC methods throughout the book. [3] It is suitable for the graduate students of statistics. [4] It's a little bit pity that this book is not purely written for mathematicians. Anyway, it is a witness of MC methods in development.
|
|
|