<?xml version="1.0" encoding="UTF-8"?><Articles><Article><id>490</id><JournalTitle>AN PROFICIENT ADVANCE FOR CLUSTERING HIGH DIMENSIONAL DATA USING SHARED NEIGHBOR CLUSTERING</JournalTitle><Abstract>The hubness is a good measure of point centrality with in a high-dimensional data cluster, and by depicts the
hubness-based clustering methods, gives that the hubs can be used effectively as cluster prototypes that are used for searching
the centroid-based cluster configurations. The results demonstrate good performance of the algorithms in different stages,
particularly in the presence of large quantities of noise. The core objective of Shared Nearest Neighbor Clustering is to find
the number of cluster points which gives out the points which are more similar to other points in a cluster which are different.
SNNC estimates the relative density, i.e., probability density, is a place which are so nearer and obtains a more robust
definition of density. The experimental performance of kernel mapping and shared neighbor clustering algorithm is used in in
spite of clustering quality, distance measurement ratio, clustering time, and energy consumption.</Abstract><Email>monishas1993@gmail.com</Email><articletype>Research</articletype><volume>6</volume><issue>5</issue><year>2016</year><keyword>Shared nearest neighbor clustering,High dimensional data,Hubness,Distance measure</keyword><AUTHORS>Monisha S,Vanathi D, Sengottuvelan P</AUTHORS><afflication> M.E.Scholar, Department of Computer Science & Engineering Nandha Engineering College, Erode, Tamil Nadu, India,Associate Professor, Department of Computer Science & Engineering, Nandha Engineering College, Erode, Tamil Nadu, India.,Associate Professor & Head, Department Of Computer Science, Periyar University PG Extension Cente, Darmapuri, Tamil Nadu, India.</afflication></Article></Articles>