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A Study On High Dimensional Clustering By Using Clique
Author(s) -
Raghunath Kar,
Susanta Kumar Das
Publication year - 2011
Publication title -
international journal of computer science and informatics
Language(s) - English
Resource type - Journals
ISSN - 2231-5292
DOI - 10.47893/ijcsi.2011.1019
Subject(s) - cluster analysis , clustering high dimensional data , dbscan , correlation clustering , linear subspace , partition (number theory) , cure data clustering algorithm , computer science , single linkage clustering , data mining , data point , dimension (graph theory) , determining the number of clusters in a data set , mathematics , fuzzy clustering , pattern recognition (psychology) , algorithm , artificial intelligence , combinatorics , geometry
In real life clustering of high dimensional data is a big problem. To find out the dense regions from increasing dimensions is one of them. We have already studied the clustering techniques of low dimensional data sets like k-means, k-mediod, BIRCH, CLARANS, CURE, DBScan, PAM etc. If a region is dense then it consists with number of data points with a minimum support of input parameter ø other wise it cannot take into clustering. So in this approach we have implemented CLIQUE to find out the clusters from multidimensional data sets. In dimension growth subspace clustering the clustering process start at single dimensional subspaces and grows upward to higher dimensional ones. It is a partition method where each dimension divided like a grid structure. The grid is a cell where the data points are present. We check the dense units from the structure by applying different algorithms. Finally the clusters are formed from the high dimensional data sets. KeywordsCLIQUE, APRIORI, DENSE UNIT

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