Autonomous and deterministic supervised fuzzy clustering

A fuzzy model based on an enhanced supervised fuzzy clustering algorithm is presented in this paper. The supervised fuzzy clustering algorithm 6 allows each rule to represent more than one output with different probabilities for each output. This algorithm implements k-means to initialize the fuzzy...

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Main Authors: Lim, K.M., Loo, C.K., Lim, W.S.
Format: Article
Published: 2010
Subjects:
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author Lim, K.M.
Loo, C.K.
Lim, W.S.
author_facet Lim, K.M.
Loo, C.K.
Lim, W.S.
author_sort Lim, K.M.
collection UM
description A fuzzy model based on an enhanced supervised fuzzy clustering algorithm is presented in this paper. The supervised fuzzy clustering algorithm 6 allows each rule to represent more than one output with different probabilities for each output. This algorithm implements k-means to initialize the fuzzy model. However, the main drawbacks of this approach are that the number of clusters is unknown and the initial positions of clusters are randomly generated. In this work, the initialization is done by the global k-means algorithm 1, which can autonomously determine the actual number of clusters needed and give a deterministic clustering result. In addition, the fast global k-means algorithm 1 is presented to improve the computation time. The model is tested on medical diagnosis benchmark data and Westland vibration data. The results obtained show that the model that uses the global k-means clustering algorithm 1 has higher accuracy when compared to a model that uses the k-means clustering algorithm. Besides that, the fast global k-means algorithm 1 also improved the computation time without degrading much the model performance.
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spelling um.eprints-51732013-03-19T01:20:04Z http://eprints.um.edu.my/5173/ Autonomous and deterministic supervised fuzzy clustering Lim, K.M. Loo, C.K. Lim, W.S. T Technology (General) A fuzzy model based on an enhanced supervised fuzzy clustering algorithm is presented in this paper. The supervised fuzzy clustering algorithm 6 allows each rule to represent more than one output with different probabilities for each output. This algorithm implements k-means to initialize the fuzzy model. However, the main drawbacks of this approach are that the number of clusters is unknown and the initial positions of clusters are randomly generated. In this work, the initialization is done by the global k-means algorithm 1, which can autonomously determine the actual number of clusters needed and give a deterministic clustering result. In addition, the fast global k-means algorithm 1 is presented to improve the computation time. The model is tested on medical diagnosis benchmark data and Westland vibration data. The results obtained show that the model that uses the global k-means clustering algorithm 1 has higher accuracy when compared to a model that uses the k-means clustering algorithm. Besides that, the fast global k-means algorithm 1 also improved the computation time without degrading much the model performance. 2010 Article PeerReviewed Lim, K.M. and Loo, C.K. and Lim, W.S. (2010) Autonomous and deterministic supervised fuzzy clustering. Neural Network World, 20 (6). pp. 705-721. ISSN 1210-0552, http://www.docstoc.com/docs/78216207/AUTONOMOUS-AND-DETERMINISTIC-SUPERVISED-FUZZY-CLUSTERING
spellingShingle T Technology (General)
Lim, K.M.
Loo, C.K.
Lim, W.S.
Autonomous and deterministic supervised fuzzy clustering
title Autonomous and deterministic supervised fuzzy clustering
title_full Autonomous and deterministic supervised fuzzy clustering
title_fullStr Autonomous and deterministic supervised fuzzy clustering
title_full_unstemmed Autonomous and deterministic supervised fuzzy clustering
title_short Autonomous and deterministic supervised fuzzy clustering
title_sort autonomous and deterministic supervised fuzzy clustering
topic T Technology (General)
work_keys_str_mv AT limkm autonomousanddeterministicsupervisedfuzzyclustering
AT loock autonomousanddeterministicsupervisedfuzzyclustering
AT limws autonomousanddeterministicsupervisedfuzzyclustering