In this paper, we propose a new approach to solve the document-clustering using the K-Means algorithm. The latter is sensitive to the random selection of the k cluster centroids in the initialization phase. To evaluate the quality of K-Means clustering we propose to model the text document clustering problem as the max stable set problem (MSSP) and use continuous Hopfield network to solve the MSSP problem to have initial centroids. The idea is inspired by the fact that MSSP and clustering share the same principle, MSSP consists to find the largest set of nodes completely disconnected in a graph, and in clustering, all objects are divided into disjoint clusters. Simulation results demonstrate that the proposed K-Means improved by MSSP (KM_MS...
Information retrieval is one of the major topics among the researchers regarding data mining. This d...
Abstract: K-Means is the most popular clustering algorithm with the convergence to one of numerous ...
Abstract Background In text mining, document clustering describes the efforts to assign unstructured...
In today’s era of World Wide Web, there is a tremendous proliferation in the amount of...
Part 3: Data MiningInternational audienceK-means algorithm is a relatively simple and fast gather cl...
Document clustering is text processing that groups documents with similar concept. Clustering is def...
In document clustering system, some documents with the same similarity scores may fall into differen...
For improving the performance of K-means on the nonconvex cluster, a multiple-means clustering metho...
K-means with its rapidity, simplicity and high scalability, has become one of the most widely used t...
In text mining, document clustering describes the efforts to assign unstructured documents to cluste...
K-means algorithm is very sensitive in initial starting points. Because of initial starting points g...
Text document clustering is gaining popularity in the knowledge discovery field for effectively navi...
A novel center-based clustering algorithm is proposed in this paper. We first for-mulate clustering ...
Abstract: Clustering is the problem of discovering “meaningful ” groups in given data. The first and...
The K-means algorithm is a well-known and widely used clustering algorithm due to its simplicity and...
Information retrieval is one of the major topics among the researchers regarding data mining. This d...
Abstract: K-Means is the most popular clustering algorithm with the convergence to one of numerous ...
Abstract Background In text mining, document clustering describes the efforts to assign unstructured...
In today’s era of World Wide Web, there is a tremendous proliferation in the amount of...
Part 3: Data MiningInternational audienceK-means algorithm is a relatively simple and fast gather cl...
Document clustering is text processing that groups documents with similar concept. Clustering is def...
In document clustering system, some documents with the same similarity scores may fall into differen...
For improving the performance of K-means on the nonconvex cluster, a multiple-means clustering metho...
K-means with its rapidity, simplicity and high scalability, has become one of the most widely used t...
In text mining, document clustering describes the efforts to assign unstructured documents to cluste...
K-means algorithm is very sensitive in initial starting points. Because of initial starting points g...
Text document clustering is gaining popularity in the knowledge discovery field for effectively navi...
A novel center-based clustering algorithm is proposed in this paper. We first for-mulate clustering ...
Abstract: Clustering is the problem of discovering “meaningful ” groups in given data. The first and...
The K-means algorithm is a well-known and widely used clustering algorithm due to its simplicity and...
Information retrieval is one of the major topics among the researchers regarding data mining. This d...
Abstract: K-Means is the most popular clustering algorithm with the convergence to one of numerous ...
Abstract Background In text mining, document clustering describes the efforts to assign unstructured...