Document Retrieval using Hierarchical Agglomerative Clustering with Multi-view point Similarity Measure Based on Correlation: Performance Analysis
Journal: International Journal of Scientific Engineering and Technology (IJSET) (Vol.2, No. 9)Publication Date: 2013-09-01
Authors : J. Sankari R. Manavalan;
Page : 861-865
Keywords : Keywords-Hierarchical Agglomerative Clustering; Document retrieval; Multi Viewpoint similarity measure; cosine similarity; correlation similarity.;
Abstract
Clustering is one of the most interesting and important tool for research in data mining and other disciplines. The aim of clustering is to find the relationship among the data objects, and classify them into meaningful subgroups. The effectiveness of clustering algorithms depends on the appropriateness of the similarity measure between the data in which the similarity can be computed. This paper focus on performance analysis of Agglomerative clustering with Multi Viewpoint based on Cosine similarity and Correlation similarities for finding the relationship between different documents and clustering them. The experiment is conducted over fifteen text documents and the performance of the proposed method is analyzed thoroughly and compared to Hierarchical Agglomerative clustering with Multi Viewpoint that is based on cosine similarity. The experimental results clearly shows that the proposed model Hierarchical Agglomerative clustering with Multi Viewpoint, based on correlation similarity perform quite well for document retrieval.
Other Latest Articles
- Design and Fabrication of Prototype of Automated Smart Car Parking System using Programmable Logical Controllers (PLC)
- Studies on Adsorption Efficiency and Kinetics of Dye Removal from Textile Effluent using some Natural Bio-adsorbent
- Survey on Adaptive Channel Equalization Techniques using Particle Swarm Optimization
- Space Time Trellis Codes Performance with OFDM System
- Performance of Energy Detection based Spectrum Sensing using Diversity Techniques over Rayleigh Fading Channel V. Sri Lakshmi, Dr. S. Sri Gowri
Last modified: 2013-09-03 20:21:05