Clustering in data mining is a discovery process that groups a set of documents such that documents within a cluster have high similarity while documents in different clusters have low similarity. Existing clustering method like K-means is a popular method but its results are based on choice of cluster centers so it easily results in local optimization. Genetic Algorithm (GA) is an optimization method which can be applied for finding out the best cluster centers easily. But sometimes it takes more iteration for finding best cluster centers. In this paper, we use features of GA with the features of Discrete Differential Evolution (DDE) to solve text documents clustering problem. To test the efficiency of our algorithm we have taken sample da...
AbstractIn this paper, we develop a genetic algorithm method based on a latent semantic model (GAL) ...
The availability of large quantity of text documents from theWorldWideWeb and business document mana...
Nowadays a vast amount of textual information is collected and stored in various databases around th...
AbstractWe propose an evolutionary approach based on genetic algorithm for text document clustering....
Document clustering is very important in the field of text categorization. Genetic algorithm, which ...
AbstractWe propose an evolutionary approach based on genetic algorithm for text document clustering....
Clustering (or cluster analysis) is one of the main data analysis techniques and deals with the orga...
The text clustering is considered as one of the most effective text document analysis methods, which...
Document clustering is the process of organizing a particularelectronic corpus of documents into sub...
Abstract — Text clustering is an important area of interest in the field of Text summarization, sent...
Search queries define a set of documents located in a collection and can be used to rank the documen...
Abstract This paper presents Hybrid Particle Swarm Optimization (PSO) -Genetic Algorithm (GA) approa...
In this paper, three similarity measures; Normalized Google Distance (NGD), Jaccard and Cosine Simil...
Genetic algorithms (GAs) have been used in the clustering subject. Also, a clustering ensemble as on...
Clustering is a typical unsupervisedlearning technique for grouping similar datapoints. In hard clus...
AbstractIn this paper, we develop a genetic algorithm method based on a latent semantic model (GAL) ...
The availability of large quantity of text documents from theWorldWideWeb and business document mana...
Nowadays a vast amount of textual information is collected and stored in various databases around th...
AbstractWe propose an evolutionary approach based on genetic algorithm for text document clustering....
Document clustering is very important in the field of text categorization. Genetic algorithm, which ...
AbstractWe propose an evolutionary approach based on genetic algorithm for text document clustering....
Clustering (or cluster analysis) is one of the main data analysis techniques and deals with the orga...
The text clustering is considered as one of the most effective text document analysis methods, which...
Document clustering is the process of organizing a particularelectronic corpus of documents into sub...
Abstract — Text clustering is an important area of interest in the field of Text summarization, sent...
Search queries define a set of documents located in a collection and can be used to rank the documen...
Abstract This paper presents Hybrid Particle Swarm Optimization (PSO) -Genetic Algorithm (GA) approa...
In this paper, three similarity measures; Normalized Google Distance (NGD), Jaccard and Cosine Simil...
Genetic algorithms (GAs) have been used in the clustering subject. Also, a clustering ensemble as on...
Clustering is a typical unsupervisedlearning technique for grouping similar datapoints. In hard clus...
AbstractIn this paper, we develop a genetic algorithm method based on a latent semantic model (GAL) ...
The availability of large quantity of text documents from theWorldWideWeb and business document mana...
Nowadays a vast amount of textual information is collected and stored in various databases around th...