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On fuzzy algorithms

Lotfi A. Zadeh
- pp 127-147
TLDR
A fuzzy algorithm is introduced which, though fuzzy rather than precise in nature, may eventually prove to be of use in a wide variety of problems relating to information processing, control, pattern recognition, system identification, artificial intelligence and, more generally, decision processes involving incomplete or uncertain data.
Abstract
Unlike most papers in Information and Control, our note contains no theorems and no proofs. Essentially, its purpose is to introduce a basic concept which, though fuzzy rather than precise in nature, may eventually prove to be of use in a wide variety of problems relating to information processing, control, pattern recognition, system identification, artificial intelligence and, more generally, decision processes involving incomplete or uncertain data. The concept in question will be called a fuzzy algorithm because it may be viewed as a generalization, through the process of fuzzification, of the conventional (nonfuzzy) conception of an algorithm. More specifically, unlike a nonfuzzy deterministic or nondeterministic algorithm (Floyd, 1967), a fuzzy algorithm may contain fuzzy statements, that is, statements containing names of fuzzy sets (Zadeh, 1965), by which we mean classes in which there may be grades of membership intermediate between full membership and nonmembership. To illustrate, fuzzy algorithms may contain fuzzy instructions such as:

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Citations
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Proceedings ArticleDOI

An efficient fuzzy controller based technique for network traffic classification to improve QoS

TL;DR: An approach is proposed that optimizes the use of the available network capacity and day to day traffic management and maintains the QoS requirement of the real time connections by marking the time insensitive but bandwidth intensive traffic.
Proceedings ArticleDOI

F3MCNN: a fuzzy minimum mean maximum clustering neural network

TL;DR: A real-time and unsupervised pattern classification system called F3MCNN is developed to solve inexact pattern clustering problems and the performance evaluation method is same as that used for the fuzzy rain-max clustering neural network.
Journal ArticleDOI

Influence of Allocating One New Fuzzy Source on DMUs Efficiency

TL;DR: Some models have been presented which can be used for allocating one or more new inputs between the DMUs in a way that some of the inefficient units have been modified to efficient units.
Journal Article

Defuzzification of Periodic Membership Function on Circular Coordinates

TL;DR: This paper presents circular polar coordinates transformation of periodic fuzzy membership function and proposed methods remove complicatedness concerning domain of periodic membership function from defuzzification in fuzzy approximate reasoning.
References
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Book

Fuzzy sets

TL;DR: A separation theorem for convex fuzzy sets is proved without requiring that the fuzzy sets be disjoint.
Journal ArticleDOI

On Computable Numbers, with an Application to the Entscheidungsproblem

TL;DR: This chapter discusses the application of the diagonal process of the universal computing machine, which automates the calculation of circle and circle-free numbers.
Journal ArticleDOI

L-fuzzy sets

TL;DR: This paper explores the foundations of, generalizes, and continues the work of Zadeh in [I] and [2].
Journal ArticleDOI

Nondeterministic Algorithms

TL;DR: Algorithms to solve combinatorial search problems by using multiple-valued functions are illustrated with algorithms to find all solutions to the eight queens problem on the chessboard, and to finding all simple cycles in a network.