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A multivariate fuzzy c-means method
[Display omitted] ► Fuzzy c-means algorithm has shown good performance in detecting clusters. ► In this paper the algorithm produces a membership matrix for each individual. ► The membership values are different from one feature to another and from one cluster to another. ► The performance is improv...
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Published in: | Applied soft computing 2013-04, Vol.13 (4), p.1592-1607 |
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Main Authors: | , |
Format: | Article |
Language: | English |
Subjects: | |
Citations: | Items that this one cites Items that cite this one |
Online Access: | Get full text |
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Summary: | [Display omitted]
► Fuzzy c-means algorithm has shown good performance in detecting clusters. ► In this paper the algorithm produces a membership matrix for each individual. ► The membership values are different from one feature to another and from one cluster to another. ► The performance is improved.
Fuzzy c-means (FCMs) is an important and popular unsupervised partitioning algorithm used in several application domains such as pattern recognition, machine learning and data mining. Although the FCM has shown good performance in detecting clusters, the membership values for each individual computed to each of the clusters cannot indicate how well the individuals are classified. In this paper, a new approach to handle the memberships based on the inherent information in each feature is presented. The algorithm produces a membership matrix for each individual, the membership values are between zero and one and measure the similarity of this individual to the center of each cluster according to each feature. These values can change at each iteration of the algorithm and they are different from one feature to another and from one cluster to another in order to increase the performance of the fuzzy c-means clustering algorithm. To obtain a fuzzy partition by class of the input data set, a way to compute the class membership values is also proposed in this work. Experiments with synthetic and real data sets show that the proposed approach produces good quality of clustering. |
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ISSN: | 1568-4946 1872-9681 |
DOI: | 10.1016/j.asoc.2012.12.024 |