AbstractWhile clustering the data using fuzzy c-means (FCM) and hard c-means (HCM), the sensitivity to tune the initial clusters centers have captured the attention of the clustering communities for quite a long time. In this study, we have taken help of new evolutionary algorithm, Teaching learning based Optimization (TLBO), is proposed as a method to address this problem. The proposed approach consists of two stages. In the first stage, the TLBO explores the search space of given dataset to find out near-optimal cluster centers. The cluster centers found by TLBO are then evaluated using reformulated c-mean objective function. In the second stage, the best cluster centers found are used as the initial cluster center for the c-mean algorith...
In this paper, a new fuzzy clustering algorithm that uses cellular learning automata based evolution...
Clustering is a method that divides data objects into groups based on information found in data desc...
In this paper we proposed a novel procedure for training a feedforward neural network. The accuracy ...
AbstractWhile clustering the data using fuzzy c-means (FCM) and hard c-means (HCM), the sensitivity ...
AbstractSince its inception, Fuzzy c-means (FCM) technique has been widely used in data clustering. ...
Since its inception, Fuzzy c-means (FCM) technique has been widely used in data clustering. The adva...
Fuzzy clustering has been widely studied and applied in a variety of key areas of science and engine...
This paper introduces an evolutionary approach to automatically determine the optimal number and loc...
The final grade of students could be determined in various ways, some of which use a range of values...
AbstractIn this Paper the focus is given on data clustering using Modified Teaching–Learning Based O...
Clustering algorithms are widely used in pattern recognition and data mining applications. Due to th...
101 p.Clustering represents a core research area of machine learning. It has been widely used in dat...
Although showing competitive performances in many real-world optimization problems, Teaching Learnin...
Abstract — A new efficient optimization method called ‘Teaching–Learning-Based Optimization (TLBO) i...
The Fuzzy C-Means (FCM) is a widely used clustering algorithm in unsupervised learning. It always co...
In this paper, a new fuzzy clustering algorithm that uses cellular learning automata based evolution...
Clustering is a method that divides data objects into groups based on information found in data desc...
In this paper we proposed a novel procedure for training a feedforward neural network. The accuracy ...
AbstractWhile clustering the data using fuzzy c-means (FCM) and hard c-means (HCM), the sensitivity ...
AbstractSince its inception, Fuzzy c-means (FCM) technique has been widely used in data clustering. ...
Since its inception, Fuzzy c-means (FCM) technique has been widely used in data clustering. The adva...
Fuzzy clustering has been widely studied and applied in a variety of key areas of science and engine...
This paper introduces an evolutionary approach to automatically determine the optimal number and loc...
The final grade of students could be determined in various ways, some of which use a range of values...
AbstractIn this Paper the focus is given on data clustering using Modified Teaching–Learning Based O...
Clustering algorithms are widely used in pattern recognition and data mining applications. Due to th...
101 p.Clustering represents a core research area of machine learning. It has been widely used in dat...
Although showing competitive performances in many real-world optimization problems, Teaching Learnin...
Abstract — A new efficient optimization method called ‘Teaching–Learning-Based Optimization (TLBO) i...
The Fuzzy C-Means (FCM) is a widely used clustering algorithm in unsupervised learning. It always co...
In this paper, a new fuzzy clustering algorithm that uses cellular learning automata based evolution...
Clustering is a method that divides data objects into groups based on information found in data desc...
In this paper we proposed a novel procedure for training a feedforward neural network. The accuracy ...