AbstractThe estimation of membership functions from data is an important step in many applications of fuzzy theory. In this paper, we provide a general overview of several methods for generating membership functions for fuzzy pattern recognition applications. We discuss methods based on heuristics, probability to possibility transformations, histograms, nearest neighbor techniques, feed-forward neural networks, clustering, and mixture decomposition. We also illustrate these membership generation methods using synthetic and real data sets, and discuss the suitability and applicability of these membership function generation techniques to particular situations
Fuzzy logic is an approach that reflects human thinking and decision making by handling uncertainty ...
[[abstract]]A unified form of fuzzy membership functions, called as B-spline membership functions (B...
This paper discusses how training algorithms for determining membership functions in fuzzy rule base...
Based on the conclusions drawn in the bijective transformation between possibility and probability, ...
In this paper, an unsupervised approach incorporating variable bandwidth mean-shift and robust stati...
We propose an algorithm for inferring membership functions of fuzzy sets by exploiting a procedure o...
This paper discusses the question how the membership functions in a fuzzy rule based system can be e...
Fuzzy neural networks provide for the extraction of fuzzy rules from artificial neural network archi...
In previous papers from the authors fuzzy model identification methods were discussed. The bacterial...
In previous papers from the authors fuzzy model identification methods were discussed. The bacterial...
There has been intensive research in neural network applications to pattern recognition problems. Pa...
This paper studies various fuzzy membership function construction methods to find the most appropria...
Several type-1 fuzzy membership function (T1 FMF) generation methods have been proposed to model the...
The paper deals with the problem of constructing Gaussian membership functions of fuzzy sets for fuz...
[[abstract]]Ant Colony Systems (ACS) have been successfully applied to optimization problems in rece...
Fuzzy logic is an approach that reflects human thinking and decision making by handling uncertainty ...
[[abstract]]A unified form of fuzzy membership functions, called as B-spline membership functions (B...
This paper discusses how training algorithms for determining membership functions in fuzzy rule base...
Based on the conclusions drawn in the bijective transformation between possibility and probability, ...
In this paper, an unsupervised approach incorporating variable bandwidth mean-shift and robust stati...
We propose an algorithm for inferring membership functions of fuzzy sets by exploiting a procedure o...
This paper discusses the question how the membership functions in a fuzzy rule based system can be e...
Fuzzy neural networks provide for the extraction of fuzzy rules from artificial neural network archi...
In previous papers from the authors fuzzy model identification methods were discussed. The bacterial...
In previous papers from the authors fuzzy model identification methods were discussed. The bacterial...
There has been intensive research in neural network applications to pattern recognition problems. Pa...
This paper studies various fuzzy membership function construction methods to find the most appropria...
Several type-1 fuzzy membership function (T1 FMF) generation methods have been proposed to model the...
The paper deals with the problem of constructing Gaussian membership functions of fuzzy sets for fuz...
[[abstract]]Ant Colony Systems (ACS) have been successfully applied to optimization problems in rece...
Fuzzy logic is an approach that reflects human thinking and decision making by handling uncertainty ...
[[abstract]]A unified form of fuzzy membership functions, called as B-spline membership functions (B...
This paper discusses how training algorithms for determining membership functions in fuzzy rule base...