This paper proposes extracting fuzzy rules from data using fuzzy possibilistic c-means and possibilistic fuzzy c-means algorithms, which provide more than one partition information: the typicality matrix and the membership matrix. Usually to extract fuzzy rules from data only one of the partition matrix is used, resulting in one rule per cluster. In our work we extract rules from both the membership partition matrix and the typicality matrix, resulting in deriving multiple rules for each cluster. These methods are applied to fuzzy modeling of four different classification problems: Iris, Wine, Wisconsin breast cancer and Altman data sets. The performance of the obtained models is compared and we consider the added value of the proposed appr...
The Fuzzy C-Means (FCM) clustering algorithm is the best known and the most used method for fuzzy cl...
This paper describes the derivation of fuzzy classification rules based on c-means fuzzy clustering ...
Abstract — This paper presents different approaches to the problem of fuzzy rules extraction by usin...
This paper proposes extracting fuzzy rules from data using fuzzy possibilistic c-means and possibili...
This paper presents the development, testing and evaluation of generalized Possibilistic fuzzy c-m...
The paper deals with the method of extracting fuzzy classification rules based a heuristic method of...
The Fuzzy C-Means (FCM) clustering algorithm is the best known and the most used method for fuzzy cl...
Abstract: Fuzzy rules have a simple structure within a multidimensional vector space and they are pr...
The paper deals with the problem of constructing Gaussian membership functions of fuzzy sets for fuz...
The fuzzy c-means (FCM) clustering algorithm is the best known and used method in fuzzy clustering ...
Abstract: This paper introduces a new method for fuzzy modeling based on set of input-output data pa...
This paper presents a possibilistic fuzzy clustering algorithm that is applied to a multidimensional...
This work proposes a method to generate a greater and bigger knowledge from a data set. The GKPFCM c...
This paper discusses the question how the membership functions in a fuzzy rule based system can be e...
The so-called fuzzy-possibilistic c-means (FPCM) algorithm was introduced as an early mixed-partitio...
The Fuzzy C-Means (FCM) clustering algorithm is the best known and the most used method for fuzzy cl...
This paper describes the derivation of fuzzy classification rules based on c-means fuzzy clustering ...
Abstract — This paper presents different approaches to the problem of fuzzy rules extraction by usin...
This paper proposes extracting fuzzy rules from data using fuzzy possibilistic c-means and possibili...
This paper presents the development, testing and evaluation of generalized Possibilistic fuzzy c-m...
The paper deals with the method of extracting fuzzy classification rules based a heuristic method of...
The Fuzzy C-Means (FCM) clustering algorithm is the best known and the most used method for fuzzy cl...
Abstract: Fuzzy rules have a simple structure within a multidimensional vector space and they are pr...
The paper deals with the problem of constructing Gaussian membership functions of fuzzy sets for fuz...
The fuzzy c-means (FCM) clustering algorithm is the best known and used method in fuzzy clustering ...
Abstract: This paper introduces a new method for fuzzy modeling based on set of input-output data pa...
This paper presents a possibilistic fuzzy clustering algorithm that is applied to a multidimensional...
This work proposes a method to generate a greater and bigger knowledge from a data set. The GKPFCM c...
This paper discusses the question how the membership functions in a fuzzy rule based system can be e...
The so-called fuzzy-possibilistic c-means (FPCM) algorithm was introduced as an early mixed-partitio...
The Fuzzy C-Means (FCM) clustering algorithm is the best known and the most used method for fuzzy cl...
This paper describes the derivation of fuzzy classification rules based on c-means fuzzy clustering ...
Abstract — This paper presents different approaches to the problem of fuzzy rules extraction by usin...