Evaluation of the intelligent hybrid methods to improve the performance of K-Means and C-Means algorithms

نویسندگان

  • Behzad Radmehr
  • Reza Ghaemi
چکیده

In this paper , The intelligent hybrid methods are used for improving the performance of K-means and Cmeans algorithms. . To achieve this, these methods are explained in order to improve the performance of these two data mining algorithms. Some suggestions are provided for this aim. The methods used for explaining in relation to C-means algorithms are fuzzy C-means algorithm, combination of fuzzy markov model with evolution algorithms, combination of neural network with C-means algorighm.

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تاریخ انتشار 2016