On Quantified Linguistic Approximation

01/23/2013
by   Ryszard Kowalczyk, et al.
0

Most fuzzy systems including fuzzy decision support and fuzzy control systems provide out-puts in the form of fuzzy sets that represent the inferred conclusions. Linguistic interpretation of such outputs often involves the use of linguistic approximation that assigns a linguistic label to a fuzzy set based on the predefined primary terms, linguistic modifiers and linguistic connectives. More generally, linguistic approximation can be formalized in the terms of the re-translation rules that correspond to the translation rules in ex-plicitation (e.g. simple, modifier, composite, quantification and qualification rules) in com-puting with words [Zadeh 1996]. However most existing methods of linguistic approximation use the simple, modifier and composite re-translation rules only. Although these methods can provide a sufficient approximation of simple fuzzy sets the approximation of more complex ones that are typical in many practical applications of fuzzy systems may be less satisfactory. Therefore the question arises why not use in linguistic ap-proximation also other re-translation rules corre-sponding to the translation rules in explicitation to advantage. In particular linguistic quantifica-tion may be desirable in situations where the conclusions interpreted as quantified linguistic propositions can be more informative and natu-ral. This paper presents some aspects of linguis-tic approximation in the context of the re-translation rules and proposes an approach to linguistic approximation with the use of quantifi-cation rules, i.e. quantified linguistic approxima-tion. Two methods of the quantified linguistic approximation are considered with the use of lin-guistic quantifiers based on the concepts of the non-fuzzy and fuzzy cardinalities of fuzzy sets. A number of examples are provided to illustrate the proposed approach.

READ FULL TEXT

page 1

page 2

page 3

page 4

page 5

page 6

page 7

research
02/26/2020

Type-2 Fuzzy Set based Hesitant Fuzzy Linguistic Term Sets for Linguistic Decision Making

Approaches based on computing with words find good applicability in deci...
research
11/27/2014

On the analysis of set-based fuzzy quantified reasoning using classical syllogistics

Syllogism is a type of deductive reasoning involving quantified statemen...
research
07/19/2018

Fuzzy quantification for linguistic data analysis and data mining

Fuzzy quantification is a subtopic of fuzzy logic which deals with the m...
research
03/27/2013

Compiling Fuzzy Logic Control Rules to Hardware Implementations

A major aspect of human reasoning involves the use of approximations. Pa...
research
04/22/2013

Towards an Extension of the 2-tuple Linguistic Model to Deal With Unbalanced Linguistic Term sets

In the domain of Computing with words (CW), fuzzy linguistic approaches ...
research
05/17/2016

Fuzzy Sets Across the Natural Language Generation Pipeline

We explore the implications of using fuzzy techniques (mainly those comm...
research
06/05/2012

Use of Fuzzy Sets in Semantic Nets for Providing On-Line Assistance to User of Technological Systems

The main objective of this paper is to develop a new semantic Network st...

Please sign up or login with your details

Forgot password? Click here to reset