Adaptive Unified Differential Evolution for Clustering
Maulida Ayu Fitriani(1*), Aina Musdholifah(2), Sri Hartati(3)
(1) Magister of Computer Science FMIPA UGM, Yogyakarta
(2) Departemen Ilmu Komputer dan Elektronika, FMIPA UGM, Yogyakarta
(3) Departemen Ilmu Komputer dan Elektronika, FMIPA UGM, Yogyakarta
(*) Corresponding Author
Abstract
Various clustering methods to obtain optimal information continues to evolve one of its development is Evolutionary Algorithm (EA). Adaptive Unified Differential Evolution (AuDE), is the development of Differential Evolution (DE) which is one of the EA techniques. AuDE has self adaptive scale factor control parameters (F) and crossover-rate (Cr).. It also has a single mutation strategy that represents the most commonly used standard mutation strategies from previous studies.
The AuDE clustering method was tested using 4 datasets. Silhouette Index and CS Measure is a fitness function used as a measure of the quality of clustering results. The quality of the AuDE clustering results is then compared against the quality of clustering results using the DE method.
The results show that the AuDE mutation strategy can expand the cluster central search produced by ED so that better clustering quality can be obtained. The comparison of the quality of AuDE and DE using Silhoutte Index is 1:0.816, whereas the use of CS Measure shows a comparison of 0.565:1. The execution time required AuDE shows better but Number significant results, aimed at the comparison of Silhoutte Index usage of 0.99:1 , Whereas on the use of CS Measure obtained the comparison of 0.184:1.Keywords
Full Text:
PDFReferences
[1] L. Gu dan X. Lu, 2012, Semi-supervised Subtractive Clustering by Seeding, 9th International Conference on Fuzzy Systems and Knowledge Discovery, Sichuan, pp. 738-741, http://ieeexplore.ieee.org/document/6234240/, diakses tanggal 19 Agustus 2017.
[2] Kuo, R.J., Syu, Y.J., Chen, Z.-Y., dan Tien, F.C., 2012, Integration of Particle Swarm Optimization and Genetic Algorithm for Dynamic Clustering, Information Sciences, 195(0): 124-140, :http://www.sciencedirect.com/science/article/pii/S0020025512000400, diakses tanggal 12 Agustus 2017.
[3] Kuo, R. J., Suryani, E., dan Yasid, A., 2013, Automatic Clustering Combining Differential Evolution Algorithmand k-Means Algorithm, Proceedings of the Institute of Industrial Engineers Asian Conference Springer Science. Singapore, :https://link.springer.com/content/pdf/10.1007%2F978-981-4451-98-7_143.pdf, diakses tanggal 10 Agustus 2017.
[4] K. Prince, R. Storm, dan J. Lampinen, 2005, Differential Evolution - A Practical Approach to Global Optimization Natural Computing Science, Berlin : Springer.
[5] Zou, D., Liu, H., Gao, L., dan Li, S., 2011, A Novel Modified Differential Evolution Algorithm for Constrained Optimization Problems, Computers & Mathematics with Applications (Elsevier), 61(6): 1608-1623, :http://www.sciencedirect.com/science/article/pii/S0898122111000460, diakses tanggal 10 Agustus 2017.
[6] Qin, A. K., Huang, V. L., dan Suganthan, P. N., 2009, Differential Evolution Algorithm with Strategy Adaptation for Global Numerical Optimization, IEEE Transactions on Evolutionary Computation, vol. 13, No. 2, pp. 398-417, http://ieeexplore.ieee.org/document/4632146/, diakses tanggal 10 Agustus 2017.
[7] Y. Wang, Z. Cai, dan Q. Zhang, 2011, Differential Evolution with Composit Trial Vektor Generation Strategies and Control Parameters, IEEE Transactions on Evalutionary Computation, Vol. 15, No. 1, 1089-778X, :http://ieeexplore.ieee.org/document/5688232/.
[8] S. Das, A. Konar, dan Chakraborty, 2005, Two Improved Differential Evolution Schemes for faster global Search, ACM SIGEVO proccedings Genetic Evolution Computation Conference, Washington DC, pp. 991-998, https://www.cs.york.ac.uk/rts/docs/GECCO_2005/Conference%20proceedings/docs/p991.pdf, diakses tanggal 10 Agustus 2017.
[9] J. Qiang, C. Mitchell, dan A. Qiang, 2016, Tuning of an Adaptive Unified Differential Evolution Algorithm for Global Optimization. (K. Tang, Ed.), IEEE World Congress on Computational Intelligence, Vancouver, Canada: IEEE, :http://wcci2016.org/index.php- Report Number: LBNL-100436, diakses tanggal 6 Agustus 2017.
[10] A. Musdholifah dan S. Z. M., Hashim, 2010, Triangular Kernel Nearest Neighbor Based Clustering For Pattern Extraction in Spatio-Temporal Database, Intelligent Systems Design and Applications (ISDA), 2010 10th International Conference on pp. 67-73, :http://ieeexplore.ieee.org/document/5687288/, diakses tanggal 8 Agustus 2017.
[11] E. Rendon, I. Abundez, A. Arizmendi, dan E. M. Quiroz, 2011, Internal versus External Cluster Validation Indexes, International Journal of Computers and Communications, Vol. 5, Nomor 1, pp. 27-34, :http://www.universitypress.org.uk/journals/cc/20-463.pdf, diakses tanggal 10 Agustus 2017.
[12] I. P. A. Pratama and A. Harjoko, “Penerapan Algoritma Invasive Weed Optimnization untuk Penentuan Titik Pusat Klaster pada K-Means,” IJCCS (Indonesian J. Comput. Cybern. Syst., vol. 9, no. 1, p. 65, Jan. 2015 [Online]. Available: https://jurnal.ugm.ac.id/ijccs/article/view/6641. [Accessed: 04-Sep-2017].
DOI: https://doi.org/10.22146/ijccs.27871
Article Metrics
Abstract views : 2885 | views : 2766Refbacks
- There are currently no refbacks.
Copyright (c) 2018 IJCCS (Indonesian Journal of Computing and Cybernetics Systems)
This work is licensed under a Creative Commons Attribution-ShareAlike 4.0 International License.
View My Stats1