Statistical Inference for Fractional Diffusion Processes
Stochastic processes are widely used for model building in the social, physical, engineering and life sciences as well as in financial economics. In model building, statistical inference for stochastic processes is of great importance from both a theoretical and an applications point of view.This bo...
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Main Author | |
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Format | eBook |
Language | English |
Published |
Newark
Wiley
2010
John Wiley & Sons John Wiley & Sons, Incorporated Wiley-Blackwell |
Edition | 1. Aufl. |
Series | Wiley series in probability and statistics Wiley series in probability and statistics. |
Subjects | |
Online Access | Get full text |
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Summary: | Stochastic processes are widely used for model building in the social, physical, engineering and life sciences as well as in financial economics. In model building, statistical inference for stochastic processes is of great importance from both a theoretical and an applications point of view.This book deals with Fractional Diffusion Processes and statistical inference for such stochastic processes. The main focus of the book is to consider parametric and nonparametric inference problems for fractional diffusion processes when a complete path of the process over a finite interval is observable.Key features:Introduces self-similar processes, fractional Brownian motion and stochastic integration with respect to fractional Brownian motion.Provides a comprehensive review of statistical inference for processes driven by fractional Brownian motion for modelling long range dependence.Presents a study of parametric and nonparametric inference problems for the fractional diffusion process.Discusses the fractional Brownian sheet and infinite dimensional fractional Brownian motion.Includes recent results and developments in the area of statistical inference of fractional diffusion processes.Researchers and students working on the statistics of fractional diffusion processes and applied mathematicians and statisticians involved in stochastic process modelling will benefit from this book. |
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ISBN: | 0470665688 9780470665688 0470667125 9780470667125 |
DOI: | 10.1002/9780470667125 |