Computer Science ›› 2010, Vol. 37 ›› Issue (2): 209-211.

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Research of Text Clustering Based on Fuzzy Granular Computing

ZHANG Xia,WANG Su-zhen,YIN Yi-xin,ZHAO Hai-long   

  • Online:2018-12-01 Published:2018-12-01

Abstract: The traditional K-means is very sensitive to initial clustering centers and the clustering result will wave with the different initial input. To remove this sensitivity, a new method was proposed to get initial clustering centers. This method is as follows; provide a normalized distance function in the fuzzy granularity space of data objects, then use the function to do a initial clustering work to these data objects who has a less distance than granularity试,then get the initial clustering centers. The test shows this method has such advantages on increasing the rate of accuracy and reducing the program times.

Key words: Fuzzy,Uranular computing,K-means,Text cluster,Normalized distance function

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