scholarly journals Information Aggregation in Intelligent Systems Using Generalized Operators

Author(s):  
Imre J. Rudas ◽  
János Fodor

Aggregation of information represented by membership functions is a central matter in intelligent systems where fuzzy rule base and reasoning mechanism are applied. Typical examples of such systems consist of, but not limited to, fuzzy control, decision support and expert systems. Since the advent of fuzzy sets a great number of fuzzy connectives, aggregation operators have been introduced. Some families of such operators (like t-norms) have become standard in the field. Nevertheless, it also became clear that these operators do not always follow the real phenomena. Therefore, there is a natural need for finding new operators to develop more sophisticated intelligent systems. This paper summarizes the research results of the authors that have been carried out in recent years on generalization of conventional operators.

2007 ◽  
Vol 20 (2) ◽  
pp. 147-169 ◽  
Author(s):  
Raouf Ketata ◽  
Hatem Bellaaj ◽  
Mohamed Chtourou ◽  
Mohamed Ben Amer

Author(s):  
WENJIANG LI ◽  
JUN LIU ◽  
HUI WANG ◽  
ALBERTO CALZADA ◽  
ROSA M. RODRIGUEZ ◽  
...  

This paper focuses on an inference methodology based on a belief linguistic rule base (B-LRB) for qualitative decision support. It is termed 'linguistic rule-base' instead of 'fuzzy rule-base' because the use of membership functions associated with the linguistic terms are unnecessary or do not play a key role. The features of B-LRB, the ways to generate a B-LRB, and the inference procedure based on B-LRB are specified, along with an illustrate example applied to evaluate consumer trustworthiness in Internet marketing to show how it works, its applicability and feasibility.


2016 ◽  
Author(s):  
Leonardo G. Melo ◽  
Luís A. Lucas ◽  
Myriam R. Delgado

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