logo
logo
x
바코드검색
BOOKPRICE.co.kr
책, 도서 가격비교 사이트
바코드검색

인기 검색어

실시간 검색어

검색가능 서점

도서목록 제공

Fuzzy Expert Systems and Fuzzy Reasoning

Fuzzy Expert Systems and Fuzzy Reasoning (Hardcover)

James J. Buckley, William Siler (지은이)
Wiley-Interscience
349,550원

일반도서

검색중
서점 할인가 할인률 배송비 혜택/추가 실질최저가 구매하기
286,630원 -18% 0원
14,340원
272,290원 >
yes24 로딩중
교보문고 로딩중
notice_icon 검색 결과 내에 다른 책이 포함되어 있을 수 있습니다.

중고도서

검색중
서점 유형 등록개수 최저가 구매하기
로딩중

eBook

검색중
서점 정가 할인가 마일리지 실질최저가 구매하기
로딩중

책 이미지

Fuzzy Expert Systems and Fuzzy Reasoning
eBook 미리보기

책 정보

· 제목 : Fuzzy Expert Systems and Fuzzy Reasoning (Hardcover) 
· 분류 : 외국도서 > 컴퓨터 > 컴퓨터 공학
· ISBN : 9780471388593
· 쪽수 : 424쪽
· 출판일 : 2004-12-01

목차

Preface.

1 Introduction.

1.1 Characteristics of Expert Systems.

1.2 Neural Nets.

1.3 Symbolic Reasoning.

1.4 Developing a Rule-Based Expert System.

1.5 Fuzzy Rule-Based Systems.

1.6 Problems in Learning How to Construct Fuzzy Expert Systems.

1.7 Tools for Learning How to Construct Fuzzy Expert Systems.

1.8 Auxiliary Reading.

1.9 Summary.

1.10 Questions.

2 Rule-Based Systems: Overview.

2.1 Expert Knowledge: Rules and Data.

2.2 Rule Antecedent and Consequent.

2.3 Data-Driven Systems.

2.4 Run and Command Modes.

2.5 Forward and Backward Chaining.

2.6 Program Modularization and Blackboard Systems.

2.7 Handling Uncertainties in an Expert System.

2.8 Summary.

2.9 Questions.

3 Fuzzy Logic, Fuzzy Sets, and Fuzzy Numbers: I.

3.1 Classical Logic.

3.2 Elementary Fuzzy Logic and Fuzzy Propositions.

3.3 Fuzzy Sets.

3.4 Fuzzy Relations.

3.5 Truth Value of Fuzzy Propositions.

3.6 Fuzzification and Defuzzification.

3.7 Questions.

4 Fuzzy Logic, Fuzzy Sets, and Fuzzy Numbers: II.

4.1 Introduction.

4.2 Algebra of Fuzzy Sets.

4.3 Approximate Reasoning.

4.4 Hedges.

4.5 Fuzzy Arithmetic.

4.6 Comparisons between Fuzzy Numbers.

4.7 Fuzzy Propositions.

4.8 Questions.

5 Combining Uncertainties.

5.1 Generalizing AND and OR Operators.

5.2 Combining Single Truth Values.

5.3 Combining Fuzzy Numbers and Membership Functions.

5.4 Bayesian Methods.

5.5 The Dempster–Shafer Method.

5.6 Summary.

5.7 Questions.

6 Inference in an Expert System I.

6.1 Overview.

6.2 Types of Fuzzy Inference.

6.3 Nature of Inference in a Fuzzy Expert System.

6.4 Modification and Assignment of Truth Values.

6.5 Approximate Reasoning.

6.6 Tests of Procedures to Obtain the Truth Value of a Consequent from the Truth Value of Its Antecedent.

6.7 Summary.

6.8 Questions.

7 Inference in a Fuzzy Expert System II: Modification of Data and Truth Values.

7.1 Modification of Existing Data by Rule Consequent Instructions.

7.2 Modification of Numeric Discrete Fuzzy Sets: Linguistic Variables and Linguistic Terms.

7.3 Selection of Reasoning Type and Grade-of-Membership Initialization.

7.4 Fuzzification and Defuzzification.

7.5 Non-numeric Discrete Fuzzy Sets.

7.6 Discrete Fuzzy Sets: Fuzziness, Ambiguity, and Contradiction.

7.7 Invalidation of Data: Non-monotonic Reasoning.

7.8 Modification of Values of Data.

7.9 Modeling the Entire Rule Space.

7.10 Reducing the Number of Classification Rules Required in the Conventional Intersection Rule Configuration.

7.11 Summary.

7.12 Questions.

8 Resolving Contradictions: Possibility and Necessity.

8.1 Definition of Possibility and Necessity.

8.2 Possibility and Necessity Suitable for MultiStep Rule-Based Fuzzy Reasoning.

8.3 Modification of Truth Values During a Fuzzy Reasoning Process.

8.4 Formulation of Rules for Possibility and Necessity.

8.5 Resolving Contradictions Using Possibility in a Necessity-Based System.

8.6 Summary.

8.7 Questions.

9 Expert System Shells and the Integrated Development Environment (IDE).

9.1 Overview.

9.2 Help Files.

9.3 Program Editing.

9.4 Running the Program.

9.5 Features of General-Purpose Fuzzy Expert Systems.

9.6 Program Debugging.

9.7 Summary.

9.8 Questions.

10 Simple Example Programs.

10.1 Simple FLOPS Programs.

10.2 Numbers.fps.

10.3 Sum.fps.

10.4 Sum.par.

10.5 Comparison of Serial and Parallel FLOPS.

10.6 Membership Functions, Fuzzification and Defuzzification.

10.7 Summary.

10.8 Questions.

11 Running and Debugging Fuzzy Expert Systems I: Parallel Programs.

11.1 Overview.

11.2 Debugging Tools.

11.3 Debugging Short Simple Programs.

11.4 Isolating the Bug: System Modularization.

11.5 The Debug Run.

11.6 Interrupting the Program for Debug Checks.

11.7 Locating Program Defects with Debug Commands.

11.8 Summary.

11.9 Questions.

12 Running and Debugging Expert Systems II: Sequential Rule-Firing.

12.1 Data Acquisition: From a User Versus Automatically Acquired.

12.2 Ways of Solving a Tree-Search Problem.

12.3 Expert Knowledge in Rules; auto1.fps.

12.4 Expert Knowledge in a Database: auto2.fps.

12.5 Other Applications of Sequential Rule Firing.

12.5.1 Missionaries and Cannibals.

12.6 Rules that Make Themselves Refireable: Runaway Programs and Recursion.

12.7 Summary.

12.8 Questions.

13 Solving “What?” Problems when the Answer is Expressed in Words.

13.1 General Methods.

13.2 Iris.par: What Species Is It?

13.3 Echocardiogram Pattern Recognition.

13.4 Schizo.par.

13.5 Discussion.

13.6 Questions.

14 Programs that Can Learn from Experience.

14.1 General Methods.

14.2 Pavlov1.par: Learning by Adding Rules.

14.3 Pavlov2.par: Learning by Adding Facts to Long-Term Memory.

14.4 Defining New Data Elements and New: RULEGEN.FPS.

14.5 Most General Way of Creating New Rules and Data Descriptors.

14.6 Discussion.

14.7 Questions.

15 Running On-Line in Real-Time.

15.1 Overview of On-Line Real-Time Work.

15.2 Input/Output On-Line in Real-Time.

15.3 On-Line Real-Time Processing.

15.4 Types of Rules Useful in Real-Time On-Line Work.

15.5 Memory Management.

15.6 Development of On-Line Real-Time Programs.

15.7 Speeding Up a Program.

15.8 Debugging Real-Time Online Programs.

15.9 Discussion.

15.10 Questions.

Appendix.

Answers.

References.

Index.

이 포스팅은 쿠팡 파트너스 활동의 일환으로,
이에 따른 일정액의 수수료를 제공받습니다.
이 포스팅은 제휴마케팅이 포함된 광고로 커미션을 지급 받습니다.
도서 DB 제공 : 알라딘 서점(www.aladin.co.kr)
최근 본 책