Journal of Engineering and Applied Sciences

Year: 2014
Volume: 9
Issue: 7
Page No. 249 - 253

Metrics Free Techniques and Issues to Acquire Unifeatured High Density Quality Clusters

Authors : G. Abel Thangaraja, Saravanan Venkataraman Tirumalai and A. Pankaj Moses Monickaraj

Abstract: There are various metrics to measure the efficiency of performance say for memory byte, kilobyte and megabyte, for time, milli and micro second. Of the various research domains in data mining, clustering the unsupervised classification is one of unique area for research. To call a cluster with better quality, the intra clustering similarity should be minimum and inter clustering density, similarity should be maximum. In this study, few of the issues and techniques that have to be focused on to acquire unifeatured high density quality clusters are elaborated along with a statistical approach. The entire research study primarily focuses by 8 dimensions which are categorized into 4 each for techniques and methods.

How to cite this article:

G. Abel Thangaraja, Saravanan Venkataraman Tirumalai and A. Pankaj Moses Monickaraj, 2014. Metrics Free Techniques and Issues to Acquire Unifeatured High Density Quality Clusters. Journal of Engineering and Applied Sciences, 9: 249-253.

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