Performance Analysis of Hybrid approach of Clustering Algorithms

نویسندگان

  • Alankrita Aggarwal
  • Neetu Wadhwa
چکیده

Clustering is a way that classifies the raw data reasonably and searches the hidden patterns that may exist in datasets. It is a process of grouping data objects into disjoint clusters so that data in the same cluster are similar, and data belonging to different cluster are differ. Many algorithms have been developed for clustering. In this paper we are reviewing performance analysis of hybrid approach of different clustering algorithms like K-Means , HAC , SOM .

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تاریخ انتشار 2011