TY - GEN
T1 - An improved differential evolution and its application to determining feature weights in similarity based clustering
AU - DONG, Chun-Ru
AU - YEUNG, Daniel S.
AU - WANG, Xi-Zhao
N1 - This work is supported by National Natural Science Foundation of China (#61170040), the natural science foundation of Hebei Province (#F2013201110), and the Development of Science and Technology Mentoring Program of Baoding (lOZG007).
PY - 2013
Y1 - 2013
N2 - Feature weighting, which is considered as an extension of feature selection techniques, has been successfully applied to improve the performance of clustering. Focusing on the clustering based on a similarity matrix, we design an optimization model to minimize the fuzziness of similarity matrix by learning feature weights. The objective of this model is to get a more reasonable result of clustering through minimizing the uncertainty (fuzziness and non-specificity) of similarity matrix. To solving this optimization model effectively, we propose a new searching approach which integrates together multiple evolution strategies of both differential evolution and dynamic differential evolution. The experimental results on several benchmark datasets show that the performance of the proposed method is significantly improved compared to that of gradient-descent-based approach in terms of five selected clustering evaluation indices, i.e., fuzziness of similarity matrix, intra-class similarity, inter-class similarity, ratio of intra-class similarity to inter-class similarity.
AB - Feature weighting, which is considered as an extension of feature selection techniques, has been successfully applied to improve the performance of clustering. Focusing on the clustering based on a similarity matrix, we design an optimization model to minimize the fuzziness of similarity matrix by learning feature weights. The objective of this model is to get a more reasonable result of clustering through minimizing the uncertainty (fuzziness and non-specificity) of similarity matrix. To solving this optimization model effectively, we propose a new searching approach which integrates together multiple evolution strategies of both differential evolution and dynamic differential evolution. The experimental results on several benchmark datasets show that the performance of the proposed method is significantly improved compared to that of gradient-descent-based approach in terms of five selected clustering evaluation indices, i.e., fuzziness of similarity matrix, intra-class similarity, inter-class similarity, ratio of intra-class similarity to inter-class similarity.
KW - Differential Evolution
KW - Dynamic Differential Evolution
KW - Feature weights learning
KW - Similarity-based clustering
UR - http://www.scopus.com/inward/record.url?scp=84907264488&partnerID=8YFLogxK
U2 - 10.1109/ICMLC.2013.6890399
DO - 10.1109/ICMLC.2013.6890399
M3 - Conference paper (refereed)
AN - SCOPUS:84907264488
VL - 4
T3 - Proceedings - International Conference on Machine Learning and Cybernetics
SP - 831
EP - 838
BT - Proceedings of the 2013 International Conference on Machine Learning and Cybernetics, Tianjin
PB - IEEE
T2 - 12th International Conference on Machine Learning and Cybernetics, ICMLC 2013
Y2 - 14 July 2013 through 17 July 2013
ER -