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Please use this identifier to cite or link to this item: https://oldena.lpnu.ua/handle/ntb/52516
Title: Fuzzy Clustering of Distorted Observations Based On Optimal Expansion Using Partial Distances
Authors: Shafronenko, Alina
Bodyanskiy, Yevgeniy
Dolotov, Artem
Setlak, Galina
Affiliation: Kharkiv National University of Radio Electronics
Rzeszow University of Technology
Bibliographic description (Ukraine): Fuzzy Clustering of Distorted Observations Based On Optimal Expansion Using Partial Distances / Alina Shafronenko, Yevgeniy Bodyanskiy, Artem Dolotov, Galina Setlak // Data stream mining and processing : proceedings of the IEEE second international conference, 21-25 August 2018, Lviv. — Львів : Lviv Politechnic Publishing House, 2018. — P. 327–330. — (Hybrid Systems of Computational Intelligence).
Bibliographic description (International): Fuzzy Clustering of Distorted Observations Based On Optimal Expansion Using Partial Distances / Alina Shafronenko, Yevgeniy Bodyanskiy, Artem Dolotov, Galina Setlak // Data stream mining and processing : proceedings of the IEEE second international conference, 21-25 August 2018, Lviv. — Lviv Politechnic Publishing House, 2018. — P. 327–330. — (Hybrid Systems of Computational Intelligence).
Is part of: Data stream mining and processing : proceedings of the IEEE second international conference, 2018
Conference/Event: IEEE second international conference "Data stream mining and processing"
Issue Date: 28-Feb-2018
Publisher: Lviv Politechnic Publishing House
Place of the edition/event: Львів
Temporal Coverage: 21-25 August 2018, Lviv
Keywords: Kohonen self-organizing network
fuzzy clustering
incomplete observations with gaps
partial distance
optimal expansion
Number of pages: 4
Page range: 327-330
Start page: 327
End page: 330
Abstract: The neural system that solves a problem of fuzzy clustering of distorted observations based on optimal expansion strategy using partial distance is proposed in this article. To solve this problem we propose the learning algorithm based on hybrid of rule “Winner-Takes-More” using modified self-organizing neuro-fuzzy Kohonen network. This modified system is characterized by basic characteristics, such as: high speed, simple numerical realization, processing of distorted information in online mode.
URI: https://ena.lpnu.ua/handle/ntb/52516
ISBN: © Національний університет „Львівська політехніка“, 2018
© Національний університет „Львівська політехніка“, 2018
Copyright owner: © Національний університет “Львівська політехніка”, 2018
References (Ukraine): [1] T Marwala, “Computational Intelligence for Missing Data Imputation, Estimation, and Management: Knowledge Optimization Techniques,” Hershey-New York: Information Science Reference, 2009.
[2] J. C. Bezdek, “Pattern Recognition with Fuzzy Objective Function Algorithms,” Plenum Press, New York, 1981.
[3] E. Lughofer, “Evolving Fuzzy Systems. Methodologies, Advanced Concepts and Applications,” Berlin-Hagenberg, 2011.
[4] T. Kohonen, “Self-Organizing Maps,” Berlin: Springer-Verlag, 1995.
[5] A. Y. Shafronenko, V. V. Volkova, and Ye. Bodyanskiy, “Adaptive clustering data with gaps,” Radioelectronics, informatics, control, no. 2. pp. 115-119, 2011. (in Russian)
[6] Ye. Bodyanskiy, A. Shafronenko, and V. Volkova, “Аdaptive clustering of incomplete data using neuro-fuzzy Kohonen network. Artificial Intelligence Methods and Techniques for Business and Engineering Applications,” ITHEA, Rzeszow, Poland; Sofia, Bulgaria. pp. 287-296, 2012.
[7] Ye. Bodyanskiy, A. Shafronenko, and V. Volkova, “Adaptive fuzzy probabilistic clustering of incomplete data,” Int. J. “Information, models and analyses”, vol.2, no. 2, pp. 112-117, 2013.
[8] Ye. Bodyanskiy, А. Shafronenko, and V. Volkova, “Neuro fuzzy Kohonen network for incomplete data clustering using optimal completion strategy,” Proceedings 20th East West Fuzzy Colloquium 2013, Zittau, pp. 214-223, 25-27 September 2013.
[9] V. Kolodyazhniy, Ye. Bodyanskiy and Ye. Gorshkov, “New recursive learning algorithms for fuzzy Kohonen clustering network,” Proc. 17th Int. Workshop on Nonlinear Dynamics of Electronc Systems, Rapperswil, Switzerland, pp. 58-61,, June 21-24, 2009.
[10] R. J. Hathaway, and J. C Bezdek, “Fuzzy c-means clustering of incomplete data,”. IEEE Trans. on Systems, Man, and Cybernetics, vol. 31, no. 5, pp. 735-744, 2001.
References (International): [1] T Marwala, "Computational Intelligence for Missing Data Imputation, Estimation, and Management: Knowledge Optimization Techniques," Hershey-New York: Information Science Reference, 2009.
[2] J. C. Bezdek, "Pattern Recognition with Fuzzy Objective Function Algorithms," Plenum Press, New York, 1981.
[3] E. Lughofer, "Evolving Fuzzy Systems. Methodologies, Advanced Concepts and Applications," Berlin-Hagenberg, 2011.
[4] T. Kohonen, "Self-Organizing Maps," Berlin: Springer-Verlag, 1995.
[5] A. Y. Shafronenko, V. V. Volkova, and Ye. Bodyanskiy, "Adaptive clustering data with gaps," Radioelectronics, informatics, control, no. 2. pp. 115-119, 2011. (in Russian)
[6] Ye. Bodyanskiy, A. Shafronenko, and V. Volkova, "Adaptive clustering of incomplete data using neuro-fuzzy Kohonen network. Artificial Intelligence Methods and Techniques for Business and Engineering Applications," ITHEA, Rzeszow, Poland; Sofia, Bulgaria. pp. 287-296, 2012.
[7] Ye. Bodyanskiy, A. Shafronenko, and V. Volkova, "Adaptive fuzzy probabilistic clustering of incomplete data," Int. J. "Information, models and analyses", vol.2, no. 2, pp. 112-117, 2013.
[8] Ye. Bodyanskiy, A. Shafronenko, and V. Volkova, "Neuro fuzzy Kohonen network for incomplete data clustering using optimal completion strategy," Proceedings 20th East West Fuzzy Colloquium 2013, Zittau, pp. 214-223, 25-27 September 2013.
[9] V. Kolodyazhniy, Ye. Bodyanskiy and Ye. Gorshkov, "New recursive learning algorithms for fuzzy Kohonen clustering network," Proc. 17th Int. Workshop on Nonlinear Dynamics of Electronc Systems, Rapperswil, Switzerland, pp. 58-61,, June 21-24, 2009.
[10] R. J. Hathaway, and J. C Bezdek, "Fuzzy c-means clustering of incomplete data,". IEEE Trans. on Systems, Man, and Cybernetics, vol. 31, no. 5, pp. 735-744, 2001.
Content type: Conference Abstract
Appears in Collections:Data stream mining and processing : proceedings of the IEEE second international conference

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