4.7 Article

Analysis of parameter selections for fuzzy c-means

Journal

PATTERN RECOGNITION
Volume 45, Issue 1, Pages 407-415

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.patcog.2011.07.012

Keywords

Fuzzy clustering; Fuzzy c-means; Cluster core

Funding

  1. National Science Council of Taiwan [NSC-99-2118-M-168-001]

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The weighting exponent m is called the fuzzifier that can influence the performance of fuzzy c-means (FCM). It is generally suggested that m is an element of[1.5,2.5]. On the basis of a robust analysis of FCM, a new guideline for selecting the parameter m is proposed. We will show that a large m value will make FCM more robust to noise and outliers. However, considerably large m values that are greater than the theoretical upper bound will make the sample mean a unique optimizer. A simple and efficient method to avoid this unexpected case in fuzzy clustering is to assign a cluster core to each cluster. We will also discuss some clustering algorithms that extend FCM to contain the cluster cores in fuzzy clusters. For a large theoretical upper bound case, we suggest the implementation of the FCM with a suitable large m value. Otherwise, we suggest implementing the clustering methods with cluster cores. When the data set contains noise and outliers, the fuzzifier m=4 is recommended for both FCM and cluster-core-based methods in a large theoretical upper bound case. (C) 2011 Elsevier Ltd. All rights reserved.

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