統計和計算逆問題 [Statistical and Computational Inverse Problems] epub pdf  mobi txt 電子書 下載

統計和計算逆問題 [Statistical and Computational Inverse Problems] epub pdf mobi txt 電子書 下載 2024

統計和計算逆問題 [Statistical and Computational Inverse Problems] epub pdf mobi txt 電子書 下載 2024


簡體網頁||繁體網頁
[芬] 凱皮奧(Kaipio J.) 著

下載链接在页面底部


點擊這裡下載
    


想要找書就要到 靜思書屋
立刻按 ctrl+D收藏本頁
你會得到大驚喜!!

發表於2024-05-17

商品介绍



齣版社: 世界圖書齣版公司
ISBN:9787510086311
版次:1
商品編碼:11647753
包裝:平裝
外文名稱:Statistical and Computational Inverse Problems
開本:24開
齣版時間:2015-01-01
用紙:膠版紙
頁數:339
正文語種:英文

統計和計算逆問題 [Statistical and Computational Inverse Problems] epub pdf mobi txt 電子書 下載 2024



类似图書 點擊查看全場最低價

相关書籍





書籍描述

內容簡介

  This book is aimed at postgraduate students in applied mathematics as well as at engineering and physics students with a firm background in mathematics. 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 nonstationary 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 problems, however, the errors are seldom very small and their properties in the deterministic sense are not well known. For example, in classical literature the error norm is usually assumed to be a known real number. In reality, the error norm is a random variable whose mean might be known.

內頁插圖

目錄

Preface
1 Inverse Problems and Interpretation of Measurements
1.1 Introductory Examples
1.2 Inverse Crimes

2 Classical Regularization Methods
2.1 Introduction: Fredholm Equation
2.2 Truncated Singular Value Decomposition
2.3 Tikhonov Regularization
2.3.1 Generalizations of the Tikhonov Regularization
2.4 Regularization by Truncated Iterative Methods
2.4.1 Landweber-Fridman Iteration
2.4.2 Kaczmarz Iteration and ART
2.4.3 Krylov Subspace Methods
2.5 Notes and Comments

3 Statistical Inversion Theory
3.1 Inverse Problems and Bayes' Formula
3.1.1 Estimators
3.2 Construction of the Likelihood Function
3.2.1 Additive Noise
3.2.2 Other Explicit Noise Models
3.2.3 Counting Process Data
3.3 Prior Models
3.3.1 Gaussian Priors
3.3.2 Impulse Prior Densities
3.3.3 Discontinuities
3.3.4 Markov Random Fields
3.3.5 Sample-based Densities
3.4 Gaussian Densities
3.4.1 Gaussian Smoothness Priors
3.5 Interpreting the Posterior Distribution
3.6 Markov Chain Monte Carlo Methods
3.6.1 The Basic Idea
3.6.2 Metropolis-Hastings Construction of the Kernel
3.6.3 Gibbs Sampler
3.6.4 Convergence
3.7 Hierarcical Models
3.8 Notes and Comments

4 Nonstationary Inverse Problems
4.1 Bayesian Filtering
4.1.1 A Nonstationary Inverse Problem
4.1.2 Evolution and Observation Models
4.2 Kalman Filters
4.2.1 Linear Gaussian Problems
4.2.2 Extended Kalman Filters
4.3 Particle Filters
4.4 Spatial Priors
4.5 Fixed-lag and Fixed-interval Smoothing
4.6 Higher-order Markov Models
4.7 Notes and Comments

5 Classical Methods Revisited
5.1 Estimation Theory
5.1.1 Maximum Likelihood Estimation
5.1.2 Estimators Induced by Bayes Costs
5.1.3 Estimation Error with Affine Estimators
5.2 Test Cases
5.2.1 Prior Distributions
5.2.2 Observation Operators
5.2.3 The Additive Noise Models
5.2.4 Test Problems
5.3 Sample-Based Error Analysis
5.4 Truncated Singular Value Decomposition
5.5 Conjugate Gradient.Iteration
5.6 Tikhonov Regularization
5.6.1 Prior Structure and Regularization Level
5.6.2 Misspeeification of the Gaussian Observation Error Model
5.6.3 Additive Cauchy Errors
5.7 Diseretization and Prior Models
5.8 Statistical Model Reduction, Approximation Errors and Inverse Crimes
5.8.1 An Example: Full Angle Tomography and CGNE
5.9 Notes and Comments

6 Model Problems
6.1 X-ray Tomography
6.1.1 Radon Transform
6.1.2 Discrete Model
6.2 Inverse Source Problems
6.2.1 Quasi-static Maxwell's Equations
6.2.2 Electric Inverse Source Problems
6.2.3 Magnetic Inverse Source Problems
6.3 Impedance Tomography
6.4 Optical Tomography
6.4.1 The Radiation Transfer Equation
6.4.2 Diffusion Approximation
6.4.3 Time-harmonic Measurement
6.5 Notes and Comments

7 Case Studies
7.1 Image Deblurring and Recovery of Anomalies
7.1.1 The Model Problem
7.1.2 Reduced and Approximation Error Models
7.1.3 Sampling the Posterior Distribution
7.1.4 Effects of Modelling Errors
7.2 Limited Angle Tomography: Dental X-ray Imaging
7.2.1 The Layer Estimation
7.2.2 MAP Estimates
7.2.3 Sampling: Gibbs Sampler
7.3 Biomagnetic Inverse Problem: Source Localization
7.3.1 Reconstruction with Gaussian White Noise Prior Model
7.3.2 Reconstruction of Dipole Strengths with the e1-prior Model
7.4 Dynamic MEG by Bayes Filtering
7.4.1 A Single Dipole Model
7.4.2 More Realistic Geometry
7.4.3 Multiple Dipole Models
7.5 Electrical Impedance Tomography: Optimal Current Patterns
7.5.1 A Posteriori Synthesized Current Patterns
7.5.2 Optimization Criterion
7.5.3 Numerical Examples
7.6 Electrical Impedance Tomography: Handling Approximation Errors
7.6.1 Meshes and Projectors
7.6.2 The Prior Distribution and the Prior Model
7.6.3 The Enhanced Error Model
7.6.4 The MAP Estimates
7.7 Electrical Impedance Process Tomography
7.7.1 The Evolution Model
7.7.2 The Observation Model and the Computational Scheme
7.7.3 The Fixed-lag State Estimate
7.7.4 Estimation of the Flow Profile
7.8 Optical Tomography in Anisotropic Media
7.8.1 The Anisotropy Model
7.8.2 Linearized Model
7.9 Optical Tomography: Boundary Recovery
7.9.1 The General Elliptic Case
7.9.2 Application to Optical Diffusion Tomography
7.10 Notes and Comments

A Appendix: Linear Algebra and Functional Analysis
A.1 Linear Algebra
A.2 Functional Analysis
A.3 Sobolev Spaces
B Appendix 2: Basics on Probability
B.1 Basic Concepts
B.2 Conditional Probabilities
References
Index

前言/序言



統計和計算逆問題 [Statistical and Computational Inverse Problems] epub pdf mobi txt 電子書 下載 2024

統計和計算逆問題 [Statistical and Computational Inverse Problems] 下載 epub mobi pdf txt 電子書

統計和計算逆問題 [Statistical and Computational Inverse Problems] pdf 下載 mobi 下載 pub 下載 txt 電子書 下載 2024

統計和計算逆問題 [Statistical and Computational Inverse Problems] mobi pdf epub txt 電子書 下載 2024

統計和計算逆問題 [Statistical and Computational Inverse Problems] epub pdf mobi txt 電子書 下載
想要找書就要到 靜思書屋
立刻按 ctrl+D收藏本頁
你會得到大驚喜!!

讀者評價

評分

很愉快的購物經曆,商品很不錯。京東服務很到位。

評分

這個不錯的!

評分

收到瞭,還沒細讀,細讀後再來詳細評價!

評分

這個不錯的!

評分

東西都還沒看到居然就被收貨瞭!

評分

不錯的東西!值得購買!

評分

收到瞭,還沒細讀,細讀後再來詳細評價!

評分

不說彆的,京東的快遞就要給贊!

評分

不說彆的,京東的快遞就要給贊!

統計和計算逆問題 [Statistical and Computational Inverse Problems] epub pdf mobi txt 電子書 下載 2024

类似图書 點擊查看全場最低價

統計和計算逆問題 [Statistical and Computational Inverse Problems] epub pdf mobi txt 電子書 下載 2024


分享鏈接





相关書籍


本站所有內容均為互聯網搜索引擎提供的公開搜索信息,本站不存儲任何數據與內容,任何內容與數據均與本站無關,如有需要請聯繫相關搜索引擎包括但不限於百度google,bing,sogou

友情鏈接

© 2024 book.tinynews.org All Rights Reserved. 靜思書屋 版权所有