Statistical and Computational Inverse Problems / Edition 1
This book is aimed at postgraduate students in applied mathematics as well as at engineering and physics students with a—rm background in mathem- ics. The first four chapters can be used as the material for a first course on inverse problems with a focus on computational and statistical aspects. On the other hand, Chapters 3 and 4, which discuss statistical and nonstati- ary inversion methods, can be used by students already having knowldege of classical inversion methods. There is rich literature, including numerous textbooks, on the classical aspects of inverse problems. From the numerical point of view, these books concentrate on problems in which the measurement errors are either very small or in which the error properties are known exactly. In real-world pr- lems, however, the errors are seldom very small and their properties in the deterministic sensearenot wellknown.For example,inclassicalliteraturethe errornorm is usuallyassumed to be a known realnumber. In reality,the error norm is a random variable whose mean might be known.
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Statistical and Computational Inverse Problems / Edition 1
This book is aimed at postgraduate students in applied mathematics as well as at engineering and physics students with a—rm background in mathem- ics. The first four chapters can be used as the material for a first course on inverse problems with a focus on computational and statistical aspects. On the other hand, Chapters 3 and 4, which discuss statistical and nonstati- ary inversion methods, can be used by students already having knowldege of classical inversion methods. There is rich literature, including numerous textbooks, on the classical aspects of inverse problems. From the numerical point of view, these books concentrate on problems in which the measurement errors are either very small or in which the error properties are known exactly. In real-world pr- lems, however, the errors are seldom very small and their properties in the deterministic sensearenot wellknown.For example,inclassicalliteraturethe errornorm is usuallyassumed to be a known realnumber. In reality,the error norm is a random variable whose mean might be known.
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Statistical and Computational Inverse Problems / Edition 1

Statistical and Computational Inverse Problems / Edition 1

Statistical and Computational Inverse Problems / Edition 1

Statistical and Computational Inverse Problems / Edition 1

Hardcover(2005)

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Overview

This book is aimed at postgraduate students in applied mathematics as well as at engineering and physics students with a—rm background in mathem- ics. The first four chapters can be used as the material for a first course on inverse problems with a focus on computational and statistical aspects. On the other hand, Chapters 3 and 4, which discuss statistical and nonstati- ary inversion methods, can be used by students already having knowldege of classical inversion methods. There is rich literature, including numerous textbooks, on the classical aspects of inverse problems. From the numerical point of view, these books concentrate on problems in which the measurement errors are either very small or in which the error properties are known exactly. In real-world pr- lems, however, the errors are seldom very small and their properties in the deterministic sensearenot wellknown.For example,inclassicalliteraturethe errornorm is usuallyassumed to be a known realnumber. In reality,the error norm is a random variable whose mean might be known.

Product Details

ISBN-13: 9780387220734
Publisher: Springer New York
Publication date: 12/01/2004
Series: Applied Mathematical Sciences , #160
Edition description: 2005
Pages: 340
Product dimensions: 6.10(w) x 9.25(h) x 0.36(d)

Table of Contents

Inverse Problems and Interpretation of Measurements.- Classical Regularization Methods.- Statistical Inversion Theory.- Nonstationary Inverse Problems.- Classical Methods Revisited.- Model Problems.- Case Studies.
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