模式识别与神经网络

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模式识别与神经网络

作者:里普利

出版社:人民邮电出版社

出版年:2009-6

页数:403

定价:69.00元

丛书:图灵原版计算机科学系列

ISBN:9787115210647

内容简介
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《模式识别与神经网络(英文版)》是模式识别和神经网络方面的名著,讲述了模式识别所涉及的统计方法、神经网络和机器学习等分支。书的内容从介绍和例子开始,主要涵盖统计决策理论、线性判别分析、弹性判别分析、前馈神经网络、非参数方法、树结构分类、信念网、无监管方法、探寻优良的模式特性等方面的内容。

《模式识别与神经网络(英文版)》可作为统计与理工科研究生课程的教材,对模式识别和神经网络领域的研究人员也是极有价值的参考书。

作者简介
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B.D.Ripley 著名的统计学家,牛津大学应用统计教授。他在空间统计学、模式识别领域作出了重要贡献,对S的开发以及S-PLUSUS和R的推广应用有着重要影响。20世纪90年代他出版了人工神经网络方面的著作,影响很大,引导统计学者开始关注机器学习和数据挖掘。除本书外,他还著有Modern Applied Statistics with S和S Programming。

目录
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1 Introduction and Examples

1.1 How do neural methods differ?

1.2 The patterm recognition task

1.3 Overview of the remaining chapters

1.4 Examples

1.5 Literature

2 Statistical Decision Theory

2.1 Bayes rules for known distributions

2.2 Parametric models

2.3 Logistic discrimination

2.4 Predictive classification

2.5 Alternative estimation procedures

2.6 How complex a model do we need?

2.7 Performance assessment

2.8 Computational learning approaches

3 Linear Discriminant Analysis

3.1 Classical linear discriminatio

3.2 Linear discriminants via regression

3.3 Robustness

3.4 Shrinkage methods

3.5 Logistic discrimination

3.6 Linear separatio andperceptrons

4 Flexible Diseriminants

4.1 Fitting smooth parametric functions

4.2 Radial basis functions

4.3 Regularization

5 Feed-forward Neural Networks

5.1 Biological motivation

5.2 Theory

5.3 Learning algorithms

5.4 Examples

5.5 Bayesian perspectives

5.6 Network complexity

5.7 Approximation results

6 Non-parametric Methods

6.1 Non-parametric estlmation of class densities

6.2 Nearest neighbour methods

6 3 Learning vector quantization

6.4 Mixture representations

7 Tree-structured Classifiers

7.1 Splitting rules

7.2 Pruning rules

7.3 Missing values

7.4 Earlier approaches

7.5 Refinements

7.6 Relationships to neural networks

7.7 Bayesian trees

8 Belief Networks

8.1 Graphical models and networks

8.2 Causal networks

8 3 Learning the network structure

8.4 Boltzmann machines

8.5 Hierarchical mixtures of experts

9 Unsupervised Methods

9.1 Projection methods

9.2 Multidimensional scaling

9.3 Clustering algorithms

9.4 Self-organizing maps

10 Finding Good Pattern Features

10.1 Bounds for the Bayes error

10.2 Normal class distributions

10.3 Branch-and-bound techniques

10.4 Feature extraction

A Statistical Sidelines

A.1 Maximum likelihood and MAP estimation

A.2 The EM algorithm

A.3 Markov chain Monte Carlo

A.4 Axioms for conditional independence

A.5 Optimization

Glossary

References

Author Index

Subject Index

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