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图书 不完备信息系统与粗糙集理论--模型与属性约简
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It is a challenging task to preface the book of Dr. Xibei Yang and Prof. Jingyu Yang which is because that their works have a wide range of knowledge and wide scope. In the last decade, Dr. Yang and Prof. Yang have done excellent job in rough set theory. The book "Incomplete Information System and Rough Set Theory: Models and Attribute Reductions" is a masterpiece. It involves some of the most basic contents in incomplete data processing, and has the authority, systematicness, width,profundity, and strong explanatory. This book has rich example, commentary and references, which makes people feel that reading this book is enjoyable. It is devoted to scholarly research on knowledge reduction, rule extraction, uncertainty reasoning,decision evaluation, and granular computing etc.

目录

Part I Indiscernibility Relation Based Rough Sets

Chapter 1 Indiscernibility Relation, Rough Sets and Information System

1.1 Pawlak's Rough Approximation

1.1.1 Rough Set

1.1.2 Uncertainty Measurements and Knowledge Granulation

1.1.3 Knowledge Reductions

1.1.4 Knowledge Dependency

1.2 Variable Precision Rough Set

1.2.1 Inclusion Error and Variable Precision Rough Set

1.2.2 Several Reducts in Variable Precision Rough Set

1.3 Multigranulation Rough Set

1.3.1 Optimistic Multigranulation Rough Set

1.3.2 Pessimistic Multigranulation Rough Set

1.3.3 Multigranulation Rough Memberships

1.4 Hierarchical Structures on Multigranulation Spaces

1.4.1 Definitions of Tlee Hierarchical Structures

1.4.2 Relationships Between Hierarchical Structures and Multigranulation Rough Sets

1.5 Information System

1.5.1 Information System and Rough Set

1.5.2 Rough Sets in Multiple-source Information Systems

1.5.3 Several Reducts in Decision System

1.6 Conclusions

References

Part II Incomplete Information Systems and Rough Sets

Chapter 2 Expansions of Rough Sets in Incomplete Information Systems.

2.1 Tolerance Relation Based Rough Set Approach

2.1.1 Tolerance Relation and Its Reducts

2.1.2 Tolerance Relation Based Rough Set and Generalized Decision Reduct.

2.2 Valued Tolerance Relation Based Rough Set Approach

2.2.1 Valued Tolerance Relation

2.2.2 Valued Tolerance Relation Bed Fuzzy Rough Set

2.3 Maximal Consistent Block Based Rough Set Approach

2.3.1 Maximal Consistent Block and Its Reducts

2.3.2 Maximal Consistent Block Based Rough Set and Approximate Distribution Reducts

2.4 Descriptor Based Rough Set

2.4.1 Descriptor and Reduct Descriptor

2.4.2 Descriptor Based Rough Set a-nd-GefieT-alized Decision Reduct of Descriptor

2.5 Similarity Relation Based Rough Set Approach

2.5.1 Similarity Relation and Similarity Based Rough Set

2.5.2 Approximate Distribution Reducts in Similarity Relation Based Rough Set

2.6 Difference Relation Based Rough Set Approach

2.6.1 Difference Relation and Its Reducts

2.6.2 Rough Set Based on Difference Relation

2.6.3 Approximate Distribution Reducts in Difference Relation Based Rough Set

2.7 Limited Tolerance Relation Based Rough Set Approach

2.7.1 Limited Tolerance Relation

2.7.2 Limited Tolerance Relation Based Rough Set

2.8 Characteristic Relation Based Rough Set Approach

2.8.1 Characteristic Relation and Characteristic Relation Based Rough Set

2.8.2 Approximate Distribution Reducts in Characteristic Relation Based Rough Set

2.9 Conclusions References

Chapter 3 Neighborhood System and Rough Set in Incomplete Information System

3.1 Neighborhood System

3.1.1 From Granular Computing to Neighborhood System

3.1.2 Binary Neighborhood System

3.1.3 Covering and Neighborhood System

3.1.4 Fuzzy Neighborhood System

3.1.5 Neighborhood System and Topological Space

3.1.6 Knowledge Operation in Neighborhood System

3.2 Neighborhood System and Rough Approximations

3.2.1 Neighborhood System Based Rough Sets

3.2:2 Relationship Between Neighborhood System Based Rough Set and VPRS

3.2.3 Neighborhood System Based Rough Approximations in Incomplete Information System

3.3 Reducts Neighborhood Systems

3.3.1 Reducts Neighborhood Systems in Incomplete Information System

3.3.2 Neighborhood Systems Based Approximate Distribution Reducts

3.4 Conclusions References

Part III Dominance-based Rough Sets and Incomplete Information Systems

Chapter 4 Dominance-based Rough Sets in Incomplete Information System

4.1 Dominance-based Rough Set

4.2 Expanded Dominance-based Rough Set in Incomplete Information System with "*"Unknown Values

4.3 Valued Dominance-based Fuzzy Rough Set Approach

4.3 A Valued Dominance Relation

4.3.2 Fuzzy Rough Approximations

4.3.3 Extraction of Decision Rules

4.4 ↑ and ↓ Descriptors and Certain Rules

4.4.1 Definition of ↑ and ↓ Descriptors

4.4.2 Reduct of ↑ and ↓ Descriptors

4.4.3 ↑ and ↓ Certain Rules

4.4.4 Optimal T and Certain Rules

4.4.5 An Illustrative Example

4.5 Limited Dominance-based Rough Set Approach

4.5.1 Limited Dominance-based Rough Set

4.5.2 Comparisons Between Expanded and Limited Dominance-based Rough Sets

4.6 Conclusions References

Chapter 5 Dominance-based Rough Sets in Incomplete Information System

5.1 Similarity Dominance Relation

5.1.1 Definition of Similarity Dominance Relation

5.1.2 Reducts of Similarity Dominance Relations

5.2 Similarity Dominance-based Rough Set and Approximate Distribution Reducts

5.2.1 Similarity Dominance-based Rough Set

5.2.2 Approximate Distribute Reducts in Similarity Dominance-based Rough Set

5.3 Similarity Dominance-based Rough Sets in Fuzzy Decision System

5.3.1 Similarity Dominance-based Rough Fuzzy Set

5.3.2 Relative Approximate Distribution Reducts of Similarity Dominance-based Rough Fuzzy Set

5.4 Conclusions References

Part IV Incomplete Information Systems and Multigrannlation Rough Sets

Chapter 6 Multigranulation Rough Sets in Incomplete Information System

6.1 Tolerance Relations Based Multigranulation Rough Sets

6.1.1 Optimistic and Pessimistic Tolerance Relations Based Multigranulation Rough Sets

6.1.2 Properties of Multigranulation Rough Sets Based on Tolerance Relations

6.1.3 Comparisons Among Several Rough Sets

6.1.4 Approximation Distribution Reducts in Tolerance Relations Based Multigranulation Rough Sets

6.2 Similarity Relations Based Multigranulation Rough Sets

6.2.1 Optimistic and Pessimistic Similarity Relations Based Multigranulation Rough Sets

6.2.2 Properties of Multigranulation Rough Sets Based on Similarity Relations

6.2.3 Comparisons Among Several Rough Sets

6.2.4 Approximate Distribution Reducts in Similarity Relations Based Multigranulation Rough Sets

6.3 Conclusions

References

Glossary

Index

标签
缩略图
书名 不完备信息系统与粗糙集理论--模型与属性约简
副书名
原作名
作者 Xibei Yang//Jingyu Yang
译者
编者
绘者
出版社 科学出版社
商品编码(ISBN) 9787030324764
开本 16开
页数 232
版次 1
装订 平装
字数
出版时间 2012-01-01
首版时间 2012-01-01
印刷时间 2012-01-01
正文语种
读者对象 青年(14-20岁),研究人员,普通成人
适用范围
发行范围 公开发行
发行模式 实体书
首发网站
连载网址
图书大类 科学技术-工业科技-机械工业
图书小类
重量 0.368
CIP核字
中图分类号
丛书名
印张 14.5
印次 1
出版地 北京
239
168
10
整理
媒质 图书
用纸 普通纸
是否注音
影印版本 原版
出版商国别 CN
是否套装 单册
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