An improved spectral clustering algorithm based on random walk |
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Authors: | Xianchao Zhang and Quanzeng You |
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Affiliation: | (1) Centre for Systems and Synthetic Biology, Department of Computer Science, Royal Holloway, University of London, TW20 0EX Egham, UK;(2) Department of Plant Biology, Carnegie Institution for Science, 260 Panama Street, Stanford, CA 94305, USA |
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Abstract: | The construction process for a similarity matrix has an important impact on the performance of spectral clustering algorithms. In this paper, we propose a random walk based approach to process the Gaussian kernel similarity matrix. In this method, the pair-wise similarity between two data points is not only related to the two points, but also related to their neighbors. As a result, the new similarity matrix is closer to the ideal matrix which can provide the best clustering result. We give a theoretical analysis of the similarity matrix and apply this similarity matrix to spectral clustering. We also propose a method to handle noisy items which may cause deterioration of clustering performance. Experimental results on real-world data sets show that the proposed spectral clustering algorithm significantly outperforms existing algorithms. |
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