Improved rough k-means clustering algorithm based on weighted distance measure with Gaussian function |
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Authors: | Tengfei Zhang Fumin Ma |
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Affiliation: | 1. College of Automation, Nanjing University of Posts and Telecommunications, Nanjing, Chinatfzhang@126.com;3. College?of?Information Engineering, Nanjing University of Finance and Economics, Nanjing, China |
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Abstract: | Rough k-means clustering algorithm and its extensions are introduced and successfully applied to real-life data where clusters do not necessarily have crisp boundaries. Experiments with the rough k-means clustering algorithm have shown that it provides a reasonable set of lower and upper bounds for a given dataset. However, the same weight was used for all the data objects in a lower or upper approximate set when computing the new centre for each cluster while the different impacts of the objects in a same approximation were ignored. An improved rough k-means clustering based on weighted distance measure with Gaussian function is proposed in this paper. The validity of this algorithm is demonstrated by simulation and experimental analysis. |
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Keywords: | Clustering algorithm rough k-means weighted distance measure rough set theory Gaussian function |
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