Modern Portfolio Optimization with NuOPT (TM), S-PLUS (R), and S+Bayes (TM) (Hardcover, 1st ed. 2005. Corr. 2nd. printing 2007)

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In recent years portfolio optimization and construction methodologies have become an increasingly critical ingredient of asset and fund management, while at the same time portfolio risk assessment has become an essential ingredient in risk management, and this trend will only accelerate in the coming years. Unfortunately there is a large gap between the limited treatment of portfolio construction methods that are presented in most university courses with relatively little hands-on experience and limited computing tools, and the rich and varied aspects of portfolio construction that are used in practice in the finance industry. Current practice demands the use of modern methods of portfolio construction that go well beyond the classical Markowitz mean-variance optimality theory and require the use of powerful scalable numerical optimization methods. This book fills the gap between current university instruction and current industry practice by providing a comprehensive computationally-oriented treatment of modern portfolio optimization and construction methods. The computational aspect of the book is based on extensive use of S-PlusA(R), the S+NuOPTa"[ optimization module, the S-Plus Robust Library and the S]Bayesa"[ Library, along with about 100 S-Plus scripts and some CRSPA(R) sample data sets of stock returns. A special time-limited version of the S-Plus software is available to purchasers of this book.

a oeFor money managers and investment professionals in the field, optimization is truly a can of worms rather left un-opened, until now! Here lies a thorough explanation of almost all possibilities one can think of for portfolio optimization, complete with error estimationtechniques and explanation of when non-normality plays a part. A highly recommended and practical handbook for the consummate professional and student alike!a

Steven P. Greiner, Ph.D., Chief Large Cap Quant & Fundamental Research Manager, Harris Investment Management

a oeThe authors take a huge step in the long struggle to establish applied post-modern portfolio theory. The optimization and statistical techniques generalize the normal linear model to include robustness, non-normality, and semi-conjugate Bayesian analysis via MCMC. The techniques are very clearly demonstrated by the extensive use and tight integration of S-Plus software. Their book should be an enormous help to students and practitioners trying to move beyond traditional modern portfolio theory.a

Peter Knez, CIO, Global Head of Fixed Income, Barclays Global Investors

a oeWith regard to static portfolio optimization, the book gives a good survey on the development from the basic Markowitz approach to state of the art models and is in particular valuable for direct use in practice or for lectures combined with practical exercises.a

Short Book Reviews of the International Statistical Institute, December 2005


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In recent years portfolio optimization and construction methodologies have become an increasingly critical ingredient of asset and fund management, while at the same time portfolio risk assessment has become an essential ingredient in risk management, and this trend will only accelerate in the coming years. Unfortunately there is a large gap between the limited treatment of portfolio construction methods that are presented in most university courses with relatively little hands-on experience and limited computing tools, and the rich and varied aspects of portfolio construction that are used in practice in the finance industry. Current practice demands the use of modern methods of portfolio construction that go well beyond the classical Markowitz mean-variance optimality theory and require the use of powerful scalable numerical optimization methods. This book fills the gap between current university instruction and current industry practice by providing a comprehensive computationally-oriented treatment of modern portfolio optimization and construction methods. The computational aspect of the book is based on extensive use of S-PlusA(R), the S+NuOPTa"[ optimization module, the S-Plus Robust Library and the S]Bayesa"[ Library, along with about 100 S-Plus scripts and some CRSPA(R) sample data sets of stock returns. A special time-limited version of the S-Plus software is available to purchasers of this book.

a oeFor money managers and investment professionals in the field, optimization is truly a can of worms rather left un-opened, until now! Here lies a thorough explanation of almost all possibilities one can think of for portfolio optimization, complete with error estimationtechniques and explanation of when non-normality plays a part. A highly recommended and practical handbook for the consummate professional and student alike!a

Steven P. Greiner, Ph.D., Chief Large Cap Quant & Fundamental Research Manager, Harris Investment Management

a oeThe authors take a huge step in the long struggle to establish applied post-modern portfolio theory. The optimization and statistical techniques generalize the normal linear model to include robustness, non-normality, and semi-conjugate Bayesian analysis via MCMC. The techniques are very clearly demonstrated by the extensive use and tight integration of S-Plus software. Their book should be an enormous help to students and practitioners trying to move beyond traditional modern portfolio theory.a

Peter Knez, CIO, Global Head of Fixed Income, Barclays Global Investors

a oeWith regard to static portfolio optimization, the book gives a good survey on the development from the basic Markowitz approach to state of the art models and is in particular valuable for direct use in practice or for lectures combined with practical exercises.a

Short Book Reviews of the International Statistical Institute, December 2005

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Product Details

General

Imprint

Springer-Verlag New York

Country of origin

United States

Release date

September 2007

Availability

Expected to ship within 10 - 15 working days

First published

October 2007

Authors

,

Dimensions

235 x 155 x 23mm (L x W x T)

Format

Hardcover

Pages

406

Edition

1st ed. 2005. Corr. 2nd. printing 2007

ISBN-13

978-0-387-21016-2

Barcode

9780387210162

Categories

LSN

0-387-21016-4



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