Spectral clustering with density sensitive similarity function
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摘要
In recent years, spectral clustering has become quite popular for data analysis because it can be solved efficiently by standard linear algebra tools and do not suffer from the problem of local optima. The clustering effect by using such spectral method, however, depends heavily on the description of similarity between instances of the datasets. In this paper, we defined the adjustable line segment length which can adjust the distance in regions with different density. It squeezes the distances in high density regions while widen them in low density regions. And then a density sensitive distance measure satisfied by symmetric, non-negative, reflexivity and triangle inequality was present, by which we can define a new similarity function for spectral clustering. Experimental results show that compared with conventional Euclidean distance based and Gaussian kernel function based spectral clustering, our proposed algorithm with density sensitive similarity measure can obtain desirable clusters with high performance on both synthetic and real life datasets.
论文关键词:Data mining,Spectral clustering,Random walk,Density sensitive,Similarity function
论文评审过程:Received 14 December 2009, Revised 21 January 2011, Accepted 25 January 2011, Available online 1 February 2011.
论文官网地址:https://doi.org/10.1016/j.knosys.2011.01.009