Explains for the first time how "computing with words" can aid
in making subjective judgments
Lotfi Zadeh, the father of fuzzy logic, coined the phrase
"computing with words" (CWW) to describe a methodology in which the
objects of computation are words and propositions drawn from a
natural language. Perceptual Computing explains how to implement
CWW to aid in the important area of making subjective judgments,
using a methodology that leads to an interactive device--a
"Perceptual Computer"--that propagates random and linguistic
uncertainties into the subjective judgment in a way that can be
modeled and observed by the judgment maker.
This book focuses on the three components of a Perceptual
Computer--encoder, CWW engines, and decoder--and then
provides detailed applications for each. It uses interval type-2
fuzzy sets (IT2 FSs) and fuzzy logic as the mathematical vehicle
for perceptual computing, because such fuzzy sets can model
first-order linguistic uncertainties whereas the usual kind of
fuzzy sets cannot. Drawing upon the work on subjective judgments
that Jerry Mendel and his students completed over the past decade,
Perceptual Computing shows readers how to:
* Map word-data with its inherent uncertainties into an IT2 FS
that captures these uncertainties
* Use uncertainty measures to quantify linguistic
uncertainties
* Compare IT2 FSs by using similarity and rank
* Compute the subsethood of one IT2 FS in another such set
* Aggregate disparate data, ranging from numbers to uniformly
weighted intervals to nonuniformly weighted intervals to words
* Aggregate multiple-fired IF-THEN rules so that the integrity of
word IT2 FS models is preserved
Free MATLAB-based software is also available online so readers
can apply the methodology of perceptual computing immediately, and
even try to improve upon it. Perceptual Computing is an
important go-to for researchers and students in the fields of
artificial intelligence and fuzzy logic, as well as for operations
researchers, decision makers, psychologists, computer scientists,
and computational intelligence experts.
Autorentext
Jerry M. Mendel is Professor of Electrical Engineering at
the University of Southern California. A Life Fellow of the IEEE
and a Distinguished Member of the IEEE Control Systems Society,
Mendel is also the recipient of many awards for his diverse
research, including the IEEE Centennial Medal, the Fuzzy Systems
Pioneer Award from the IEEE Computational Intelligence Society, and
the IEEE Third Millennium Medal.
Dongrui Wu is a Postdoctoral Research Associate at the
University of Southern California, where he recently obtained his
PhD in electrical engineering.
Zusammenfassung
Explains for the first time how "computing with words" can aid in making subjective judgments
Lotfi Zadeh, the father of fuzzy logic, coined the phrase "computing with words" (CWW) to describe a methodology in which the objects of computation are words and propositions drawn from a natural language. Perceptual Computing explains how to implement CWW to aid in the important area of making subjective judgments, using a methodology that leads to an interactive devicea "Perceptual Computer"that propagates random and linguistic uncertainties into the subjective judgment in a way that can be modeled and observed by the judgment maker.
This book focuses on the three components of a Perceptual Computerencoder, CWW engines, and decoderand then provides detailed applications for each. It uses interval type-2 fuzzy sets (IT2 FSs) and fuzzy logic as the mathematical vehicle for perceptual computing, because such fuzzy sets can model first-order linguistic uncertainties whereas the usual kind of fuzzy sets cannot. Drawing upon the work on subjective judgments that Jerry Mendel and his students completed over the past decade, Perceptual Computing shows readers how to:
-
Map word-data with its inherent uncertainties into an IT2 FS that captures these uncertainties
-
Use uncertainty measures to quantify linguistic uncertainties
-
Compare IT2 FSs by using similarity and rank
-
Compute the subsethood of one IT2 FS in another such set
-
Aggregate disparate data, ranging from numbers to uniformly weighted intervals to nonuniformly weighted intervals to words
-
Aggregate multiple-fired IF-THEN rules so that the integrity of word IT2 FS models is preserved
Free MATLAB-based software is also available online so readers can apply the methodology of perceptual computing immediately, and even try to improve upon it. Perceptual Computing is an important go-to for researchers and students in the fields of artificial intelligence and fuzzy logic, as well as for operations researchers, decision makers, psychologists, computer scientists, and computational intelligence experts.
Inhalt
Preface.
1 Introduction.
1.1 Perceptual Computing.
1.2 Examples.
1.3 Historical Origins of Perceptual Computing.
1.4 How to Validate the Perceptual Computer.
1.5 The Choice of Fuzzy Set Models for the Per-C.
1.6 Keeping the Per-C as Simple as Possible.
1.7 Coverage of the Book.
1.8 High-Level Synopses of Technical Details.
References.
2 Interval Type-2 Fuzzy Sets.
2.1 A Brief Review of Type-1 Fuzzy Sets.
2.2 Introduction to Interval Type-2 Fuzzy Sets.
2.3 Definitions.
2.4 Wavy-Slice Representation Theorem.
2.5 Set-Theoretic Operations.
2.6 Centroid of an IT2 FS.
2.7 KM Algorithms.
2.8 Cardinality and Average Cardinality of an IT2 FS.
2.9 Final Remark.
Appendix 2A. Derivation of the Union of Two IT2 FSs.
Appendix 2B. Enhanced KM (EKM) Algorithms.
References.
3 Encoding: From a Word to a Model--TheCodebook.
3.1 Introduction.
3.2 Person FOU Approach for a Group of Subjects.
3.3 Collecting Interval End-Point Data.
3.4 Interval End-Points Approach.
3.5 Interval Approach.
3.6 Hedges.
Appendix 3A. Methods for Eliciting T1 MF Information FromSubjects.
Appendix 3B. Derivation of Reasonable Interval Test.
References.
4 Decoding: From FOUs to a Recommendation.
4.1 Introduction.
4.2 Similarity Measure Used as a Decoder.
4.3 Ranking Method Used as a Decoder.
4.4 Classifier Used as a Decoder.
5 Novel Weighted Averages as a CWW Engine.
5.1 Introduction.
5.2 Novel Weighted Averages.
5.3 Interval Weighted Average.
5.4 Fuzzy Weighted Average.
5.5 Linguistic Weighted Average.
5.6 A Special Case of the LWA.
5.7 Fuzzy Extensions of Ordered Weighted Averages.
6 IF-THEN Rules as a CWW Engine--PerceptualReasoning.
6.1 Introduction.
6.2 A Brief Overview of Interval Type-2 Fuzzy Logic Systems.
6.3 Perceptual Reasoning: Computations.
6.4 Perceptual Reasoning: Properties.
7 Assisting in Making Investment Choices--InvestmentJudgment Advisor (IJA).
7.1 Introduction.
7.2 Encoder for the IJA.
7.3 Reduction of the Codebooks to User-Friendly Codebooks.
7.4 CWW Engine for the IJA.
7.5 Decoder for the IJA.
7.6 Examples.
7.7 Interactive Software for the IJA.
7.8 Conclusions.
References.
8 Assisting in Making Social Judgments--Social JudgmentAdvisor (SJA).
8.1 Introduction.
8.2 Design an SJA.
8.3 Using an SJA.
8.4 Discussion.
8.5 Conclusions.
References.
9 Assisting in Hierarchical Decision Making--ProcurementJudgment Advisor (PJA).
…