Beyond FCM: Graph-theoretic post-processing algorithms for learning and representing the data structure

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We show that when fuzzy C-means (FCM) algorithm is used in an over-partitioning mode, the resulting membership values can be further utilized for building a connectivity graph that represents the relative distribution of the computed centroids. Standard graph-theoretic procedures and recent algorithms from manifold learning theory are subsequently applied to this graph. This facilitates the accomplishment of a great variety of data-analysis tasks. The definition of optimal cluster number Co, the detection of intrinsic geometrical constraints within the data, and the faithful low-dimensional representation of the original structure are all performed efficiently, by working with just a down-sampled version (comprised of the centroids) of the data. Our approach is extensively demonstrated using synthetic data and actual brain signals.

论文关键词:Fuzzy clustering,Manifold learning,Prototyping,Spectral-graph theory,Visual data mining

论文评审过程:Received 19 September 2007, Revised 25 January 2008, Accepted 6 February 2008, Available online 10 March 2008.

论文官网地址:https://doi.org/10.1016/j.patcog.2008.02.005