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Density based fuzzy c-means clustering of non-convex patterns
Institution:1. Univ. Orléans, CNRS, MAPMO, UMR 7349, Orléans, France;2. INRA, US1106 Unité Infosol, F-45000 Orléans, France;3. UMR SAS, INRA, Agrocampus, Rennes, France;1. BGP, CNPC, Zhuozhou, China;2. College of Earth Science and Engineering, Shandong University of Science and Technology, Qingdao, China
Abstract:We propose a new technique to perform unsupervised data classification (clustering) based on density induced metric and non-smooth optimization. Our goal is to automatically recognize multidimensional clusters of non-convex shape. We present a modification of the fuzzy c-means algorithm, which uses the data induced metric, defined with the help of Delaunay triangulation. We detail computation of the distances in such a metric using graph algorithms. To find optimal positions of cluster prototypes we employ the discrete gradient method of non-smooth optimization. The new clustering method is capable to identify non-convex overlapped d-dimensional clusters.
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