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 ha...
t-norms and t-conorms are the natural connectives “and” and “or” in fuzzy logic. The unit interval w...
In this work we provide a short survey of the most frequently used fuzzy reasoning schemes. The pap...
Fuzzy logic provides a way to model the events or conditions that have inherent uncertainties, i.e. ...
Abstract: In intelligent systems where fuzzy rule base and reasoning mechanism are applied, like fuz...
Aggregation is one of the key issues in the development of intelligent systems, just like with neura...
In this paper new types of aggregation operators, namely absorbing-norms and parametric type of oper...
Theoretical advances in modelling aggregation of information produced a wide range of aggregation op...
The article deals with mathematical formalism of the process of combining several inputs into a sing...
summary:It has been lately made very clear that aggregation processes can not be based upon a unique...
The paper aims to investigate the power operation of continuous triangular norms (t-norms) and devel...
AbstractT-norm and T-conorm operators are successfully used for processing uncertainty in system ana...
The fourteen papers in this special section are devoted to aggregation operators with respect to kno...
We explore questions related to the aggregation operators and aggregation of fuzzy sets. No prelimin...
Fuzzy logic provides a mathematical formalism for a unified treatment of vagueness and imprecision t...
summary:Generalized aggregation operators are the tool for aggregation of fuzzy sets. The apparatus ...
t-norms and t-conorms are the natural connectives “and” and “or” in fuzzy logic. The unit interval w...
In this work we provide a short survey of the most frequently used fuzzy reasoning schemes. The pap...
Fuzzy logic provides a way to model the events or conditions that have inherent uncertainties, i.e. ...
Abstract: In intelligent systems where fuzzy rule base and reasoning mechanism are applied, like fuz...
Aggregation is one of the key issues in the development of intelligent systems, just like with neura...
In this paper new types of aggregation operators, namely absorbing-norms and parametric type of oper...
Theoretical advances in modelling aggregation of information produced a wide range of aggregation op...
The article deals with mathematical formalism of the process of combining several inputs into a sing...
summary:It has been lately made very clear that aggregation processes can not be based upon a unique...
The paper aims to investigate the power operation of continuous triangular norms (t-norms) and devel...
AbstractT-norm and T-conorm operators are successfully used for processing uncertainty in system ana...
The fourteen papers in this special section are devoted to aggregation operators with respect to kno...
We explore questions related to the aggregation operators and aggregation of fuzzy sets. No prelimin...
Fuzzy logic provides a mathematical formalism for a unified treatment of vagueness and imprecision t...
summary:Generalized aggregation operators are the tool for aggregation of fuzzy sets. The apparatus ...
t-norms and t-conorms are the natural connectives “and” and “or” in fuzzy logic. The unit interval w...
In this work we provide a short survey of the most frequently used fuzzy reasoning schemes. The pap...
Fuzzy logic provides a way to model the events or conditions that have inherent uncertainties, i.e. ...