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Performance Analysis of AIM-K-means & K-means in Quality Cluster Generation (0912.3983v1)

Published 20 Dec 2009 in cs.LG

Abstract: Among all the partition based clustering algorithms K-means is the most popular and well known method. It generally shows impressive results even in considerably large data sets. The computational complexity of K-means does not suffer from the size of the data set. The main disadvantage faced in performing this clustering is that the selection of initial means. If the user does not have adequate knowledge about the data set, it may lead to erroneous results. The algorithm Automatic Initialization of Means (AIM), which is an extension to K-means, has been proposed to overcome the problem of initial mean generation. In this paper an attempt has been made to compare the performance of the algorithms through implementation

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Authors (2)
  1. Samarjeet Borah (2 papers)
  2. Mrinal Kanti Ghose (2 papers)
Citations (47)

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