AbstractThe description of the attributes or characteristics of the individual parts in a feature-based clustering system is frequently vague, and linguistic, fuzzy number or fuzzy coding is ideally suited to represent these attributes. However, due to the vagueness of the description, the resulting fuzzy membership functions are usually very approximate. Neural network learning to improve the fuzzy representation was used in this investigation to overcome these difficulties. In particular, Kohonen's self-organizing map network combined with fuzzy membership functions was used to classify the different parts based on their various attributes. The network can simultaneously deal with crisp attributes, interval attributes, and fuzzy attribute...
A self-organizing neural network is proposed which is inherently a fizzy inference system with the c...
Abstract-This paper describes a self-organizing artificial neural network, based on Kohonen’s model ...
The purpose of this paper is to improve the performance of the kernel fuzzy clustering model by intr...
AbstractThe description of the attributes or characteristics of the individual parts in a feature-ba...
This paper presents a Kohonen-like mapping that eliminates or reduces four limitations of the Kohone...
Abstract: Exploration of large and high-dimensional data sets is one of the main problems in data an...
In this article the problem of clustering massive data sets, which are represented in the matrix for...
This paper describes a self-organizing artificial neural network, based on Kohonen's model of self-o...
Clustering partitions a set of objects into non-overlapping subsets called clusters such that object...
The clustering results are analyzed by comparing two algorithms (SOM and FCM). The multidimensional...
In this paper, an improved self-organizing fuzzy neural network (SOFNN-CA) based on a clustering alg...
In the area of pattern recognition, clustering algorithms are a family of unsupervised classifiers d...
Abstract- This paper introduces an innovative synergistic model that aims to improve the efficiency ...
Clustering is to group similar objects into clusters. Until now there are a lot of approaches using ...
This paper discusses a system of self-organizing maps that approximate the fuzzy membership function...
A self-organizing neural network is proposed which is inherently a fizzy inference system with the c...
Abstract-This paper describes a self-organizing artificial neural network, based on Kohonen’s model ...
The purpose of this paper is to improve the performance of the kernel fuzzy clustering model by intr...
AbstractThe description of the attributes or characteristics of the individual parts in a feature-ba...
This paper presents a Kohonen-like mapping that eliminates or reduces four limitations of the Kohone...
Abstract: Exploration of large and high-dimensional data sets is one of the main problems in data an...
In this article the problem of clustering massive data sets, which are represented in the matrix for...
This paper describes a self-organizing artificial neural network, based on Kohonen's model of self-o...
Clustering partitions a set of objects into non-overlapping subsets called clusters such that object...
The clustering results are analyzed by comparing two algorithms (SOM and FCM). The multidimensional...
In this paper, an improved self-organizing fuzzy neural network (SOFNN-CA) based on a clustering alg...
In the area of pattern recognition, clustering algorithms are a family of unsupervised classifiers d...
Abstract- This paper introduces an innovative synergistic model that aims to improve the efficiency ...
Clustering is to group similar objects into clusters. Until now there are a lot of approaches using ...
This paper discusses a system of self-organizing maps that approximate the fuzzy membership function...
A self-organizing neural network is proposed which is inherently a fizzy inference system with the c...
Abstract-This paper describes a self-organizing artificial neural network, based on Kohonen’s model ...
The purpose of this paper is to improve the performance of the kernel fuzzy clustering model by intr...