
Optimal Statistical Inference in Financial Engineering
Chapman & Hall/CRC (Publisher)
1st Edition
Published on 26. November 2007
Book
Hardback
378 pages
978-1-58488-591-7 (ISBN)
Description
Until now, few systematic studies of optimal statistical inference for stochastic processes had existed in the financial engineering literature, even though this idea is fundamental to the field. Balancing statistical theory with data analysis, Optimal Statistical Inference in Financial Engineering examines how stochastic models can effectively describe actual financial data and illustrates how to properly estimate the proposed models.
After explaining the elements of probability and statistical inference for independent observations, the book discusses the testing hypothesis and discriminant analysis for independent observations. It then explores stochastic processes, many famous time series models, their asymptotically optimal inference, and the problem of prediction, followed by a chapter on statistical financial engineering that addresses option pricing theory, the statistical estimation for portfolio coefficients, and value-at-risk (VaR) problems via residual empirical return processes. The final chapters present some models for interest rates and discount bonds, discuss their no-arbitrage pricing theory, investigate problems of credit rating, and illustrate the clustering of stock returns in both the New York and Tokyo Stock Exchanges.
Basing results on a modern, unified optimal inference approach for various time series models, this reference underlines the importance of stochastic models in the area of financial engineering.
After explaining the elements of probability and statistical inference for independent observations, the book discusses the testing hypothesis and discriminant analysis for independent observations. It then explores stochastic processes, many famous time series models, their asymptotically optimal inference, and the problem of prediction, followed by a chapter on statistical financial engineering that addresses option pricing theory, the statistical estimation for portfolio coefficients, and value-at-risk (VaR) problems via residual empirical return processes. The final chapters present some models for interest rates and discount bonds, discuss their no-arbitrage pricing theory, investigate problems of credit rating, and illustrate the clustering of stock returns in both the New York and Tokyo Stock Exchanges.
Basing results on a modern, unified optimal inference approach for various time series models, this reference underlines the importance of stochastic models in the area of financial engineering.
Reviews / Votes
This book can be recommended to scholars and PhD students interested in finance and time series.-Journal of Times Series Analysis, April 2010
More details
Language
English
Place of publication
Oxford
United States
Publishing group
Taylor & Francis Inc
Target group
College/higher education
Professional
Illustrations
61 s/w Abbildungen, 21 s/w Tabellen
21 Tables, black and white; 61 Illustrations, black and white
Dimensions
Height: 234 mm
Width: 156 mm
Weight
657 gr
ISBN-13
978-1-58488-591-7 (9781584885917)
Copyright in bibliographic data and cover images is held by Nielsen Book Services Limited or by the publishers or by their respective licensors: all rights reserved.
Schweitzer Classification
Other editions
Additional editions

Masanobu Taniguchi | Junichi Hirukawa | Kenichiro Tamaki
Optimal Statistical Inference in Financial Engineering
E-Book
11/2007
Chapman & Hall/CRC
€225.99
Available for download

Masanobu Taniguchi | Junichi Hirukawa | Kenichiro Tamaki
Optimal Statistical Inference in Financial Engineering
E-Book
11/2007
Chapman and Hall
€225.99
Available for download
Persons
Masanobu Taniguchi, Junichi Hirukawa, Kenichiro Tamaki
Content
Preface. Introduction. Elements of Probability. Statistical Inference. Various Statistical Methods. Stochastic Processes. Time Series Analysis. Introduction to Statistical Financial Engineering. Term Structure. Credit Rating. Appendix. References. Index.