Other research group involved: Centre for Computational Intelligence (CCI).The work reported in this paper addresses the challenge of the efficient and accurate defuzzification of discretised interval type-2 fuzzy sets. The exhaustive method of defuzzification for type-2 fuzzy sets is extremely slow, owing to its enormous computational complexity. Several approximate methods have been devised in response to this bottleneck. In this paper we survey four alternative strategies for defuzzifying an interval type-2 fuzzy set: 1. The Karnik-Mendel Iterative Procedure, 2. the Wu-Mendel Approximation, 3. the Greenfield-Chiclana Collapsing Defuzzifier, and 4. the Nie-Tan Method. We evaluated the different methods experimentally for accuracy, by mea...
The number of applications of interval type-2 fuzzy logic to real world problems is growing. To dat...
Fuzzy logic is a method to formalize the human capacity of imprecise reasoning. Fuzzy logic react ho...
Abstract The defuzzification of a type-2 fuzzy set is a two stage process consisting of firstly type...
Type-2 fuzzy inferencing for generalised, discretised type-2 fuzzy sets has been impeded by the comp...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
CCI - Centre for Computational Intelligence ...
Type-reduction of type-2 fuzzy sets is considered to be a defuzzification bottleneck because of the ...
Type-reduction of type-2 fuzzy sets is considered to be a defuzzification bottleneck because of the ...
Type-reduction of type-2 fuzzy sets is considered to be a defuzzification bottleneck because of the ...
Type-reduction of type-2 fuzzy sets is considered to be a defuzzification bottleneck because of the ...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
Abstract The work reported in this paper addresses the challenge of the efficient and accurate defuz...
The work reported in this paper addresses the challenge of the efficient and accurate defuzzifica-ti...
The number of applications of interval type-2 fuzzy logic to real world problems is growing. To dat...
Fuzzy logic is a method to formalize the human capacity of imprecise reasoning. Fuzzy logic react ho...
Abstract The defuzzification of a type-2 fuzzy set is a two stage process consisting of firstly type...
Type-2 fuzzy inferencing for generalised, discretised type-2 fuzzy sets has been impeded by the comp...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
CCI - Centre for Computational Intelligence ...
Type-reduction of type-2 fuzzy sets is considered to be a defuzzification bottleneck because of the ...
Type-reduction of type-2 fuzzy sets is considered to be a defuzzification bottleneck because of the ...
Type-reduction of type-2 fuzzy sets is considered to be a defuzzification bottleneck because of the ...
Type-reduction of type-2 fuzzy sets is considered to be a defuzzification bottleneck because of the ...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
Abstract The work reported in this paper addresses the challenge of the efficient and accurate defuz...
The work reported in this paper addresses the challenge of the efficient and accurate defuzzifica-ti...
The number of applications of interval type-2 fuzzy logic to real world problems is growing. To dat...
Fuzzy logic is a method to formalize the human capacity of imprecise reasoning. Fuzzy logic react ho...
Abstract The defuzzification of a type-2 fuzzy set is a two stage process consisting of firstly type...