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Fuzzy Sets and Fuzzy Logic: Theory and Applications

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TLDR
Fuzzy Sets and Fuzzy Logic is a true magnum opus; it addresses practically every significant topic in the broad expanse of the union of fuzzy set theory and fuzzy logic.
Abstract
Fuzzy Sets and Fuzzy Logic is a true magnum opus. An enlargement of Fuzzy Sets, Uncertainty, and Information—an earlier work of Professor Klir and Tina Folger—Fuzzy Sets and Fuzzy Logic addresses practically every significant topic in the broad expanse of the union of fuzzy set theory and fuzzy logic. To me Fuzzy Sets and Fuzzy Logic is a remarkable achievement; it covers its vast territory with impeccable authority, deep insight and a meticulous attention to detail. To view Fuzzy Sets and Fuzzy Logic in a proper perspective, it is necessary to clarify a point of semantics which relates to the meanings of fuzzy sets and fuzzy logic. A frequent source of misunderstanding fias to do with the interpretation of fuzzy logic. The problem is that the term fuzzy logic has two different meanings. More specifically, in a narrow sense, fuzzy logic, FLn, is a logical system which may be viewed as an extension and generalization of classical multivalued logics. But in a wider sense, fuzzy logic, FL^ is almost synonymous with the theory of fuzzy sets. In this context, what is important to recognize is that: (a) FLW is much broader than FLn and subsumes FLn as one of its branches; (b) the agenda of FLn is very different from the agendas of classical multivalued logics; and (c) at this juncture, the term fuzzy logic is usually used in its wide rather than narrow sense, effectively equating fuzzy logic with FLW In Fuzzy Sets and Fuzzy Logic, fuzzy logic is interpreted in a sense that is close to FLW. However, to avoid misunderstanding, the title refers to both fuzzy sets and fuzzy logic. Underlying the organization of Fuzzy Sets and Fuzzy Logic is a fundamental fact, namely, that any field X and any theory Y can be fuzzified by replacing the concept of a crisp set in X and Y by that of a fuzzy set. In application to basic fields such as arithmetic, topology, graph theory, probability theory and logic, fuzzification leads to fuzzy arithmetic, fuzzy topology, fuzzy graph theory, fuzzy probability theory and FLn. Similarly, hi application to applied fields such as neural network theory, stability theory, pattern recognition and mathematical programming, fuzzification leads to fuzzy neural network theory, fuzzy stability theory, fuzzy pattern recognition and fuzzy mathematical programming. What is gained through fuzzification is greater generality, higher expressive power, an enhanced ability to model real-world problems and, most importantly, a methodology for exploiting the tolerance for imprecision—a methodology which serves to achieve tractability,

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Citations
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Integrating indicators for performance assessment of small water utilities using ordered weighted averaging (OWA) operators

TL;DR: The small utility performance indicators developed suggest that it is feasible to combine information operational, infrastructure, and maintenance characteristics of utilities that are aggregated using ordered weighted averaging (OWA) operators to establish utility performance.
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Quantitative developments in the cognitive reliability and error analysis method (CREAM) for the assessment of human performance

TL;DR: In this article, the authors consider the Cognitive Reliability and Error Analysis Method (CREAM) and propose some developments with respect to a systematic procedure for computing probabilities of action failure.
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Modelling experts' attitudes in group decision making

TL;DR: This paper presents a consensus model that integrates group’s attitude towards consensus in the measurement of consensus, through an extension of OWA aggregation operators, the so-called Attitude-OWA, and the results are analysed.
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Data-Distribution-Aware Fuzzy Rough Set Model and its Application to Robust Classification

TL;DR: A data-distribution-aware FRS model that considers distribution information and incorporates it in computing lower and upper fuzzy approximations is proposed, which considers not only the similarity between samples, but also the probability density of classes.
Journal ArticleDOI

On prioritized weighted aggregation in multi-criteria decision making

TL;DR: A prioritized weighted aggregation operator based on ordered weighted averaging (OWA) operator and triangular norms (t-norms) and considering decision maker (DM)'s requirement toward higher priority levels, a benchmark based approach is proposed to induce priority weight for each priority level.
References
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Fuzzy Set Theory in Medical Diagnosis

TL;DR: Fuzzy set theory has a number of properties that make it suitable for formalizing the uncertain information upon which medical diagnosis and treatment is usually based, and trials performed with the medical expert system CADIAG-2 suggest that it might be a suitable basis for the development of a computerized diagnosis system.
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On Some Logical Connectives for Fuzzy Sets Theory

TL;DR: In this paper, it was proved that distributivity, monotonicity and boundary conditions are essential assumptions for truth-functional logical connectives for fuzzy sets, under reasonable hypotheses (especially distributivity).
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Fuzzy decision trees

TL;DR: The decision trees method is extended to the case when the involved data appear as words belonging to the common language whose semantic representations are fuzzy sets, and a reformalization of the basic concepts of probability and utility theory is carried out.
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Design of a fuzzy controller using input and output mapping factors

TL;DR: A complete design procedure for a fuzzy three-term PID controller containing the rules along with the quantization and tuning procedures by means of input and output mapping factors is presented.