Abstract:At present,the concept-drifting phenomena in various datasets receives considerable attention. Aiming at the classification of concept drift,an adaptive neighbor projection mean discrepancy support vector machine (NMD-SVM) is proposed. The concept of the neighbor projection mean discrepancy in the reproducing kernel Hilbert space is defined to measure the discrepancy between adjacent sub-classifiers,and the distribution characteristics of data are integrated into the process of global optimization. Thus,the adaptability of classification algorithm is enhanced. The experimental results on the simulation and real datasets validate the effectiveness of the proposed algorithm.
[1] Baena-García M,Campo-vila J D,Fidalgo R,et al. Early Drift Detection Method // Proc of the 4th ECML PKDD International Workshop on Knowledge Discovery from Data Streams. Berlin,Germany,2006: 77-86 [2] Ko A H R,Sabourin R. From Dynamic Classifier Selection to Dynamic Ensemble Selection. Pattern Recognition,2008,41(5): 1718-1731 [3] Tsymbal A,Pechenizkiy M,Cunningham P,et al. Dynamic Integration of Classifiers for Handling Concept Drift. Information Fusion,2008,9(1): 56-68 [4] Wu Dengyuan,Wang Kai,He Tao,et al. A Dynamic Weighted Ensemble to Cope with Concept Drifting Classification // Proc of the 9th International Conference for Young Computer Scientists. Zhangjiajie,China,2008: 1854-1859 [5] Kolter J Z,Maloof M A. Using Additive Expert Ensembles to Cope with Concept Drift // Proc of the 22nd International Conference on Machine Leaning. Bonn,Germany,2005: 449-456 [6] Street W N,Kim Y S. A Streaming Ensemble Algorithm SEA for Large-Scale Classification // Proc of the 7th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining. San Francisco,USA,2001: 377-382 [7] Sun Yue,Mao Guojun,Liu Xu,et al. Mining Concept Drifts from Data Streams Based on Multi-Classifiers. Acta Automatica Sinica,2008,34(1): 93-97 (in Chinese) (孙 岳,毛国君,刘 旭 ,等.基于多分类器的数据流中的概念漂移挖掘.自动化学报,2008,34(1): 93-97) [8] Masud M M,Gao J,Khan L,et al. A Multi-Partition Multi-Chunk Ensemble Technique to Classify Concept-Drifting Data Streams // Proc of the 13th Pacific-Asia Conference on Advances in Knowledge Discovery and Data Mining. Bangkok,Thailand,2009: 363-375 [9] Lazarescu M M,Venkatesh S,Bui H H. Using Multiple Windows to Track Concept Drift.Intelligent Data Analysis,2004,8(1): 29-59 [10] Grinblat G L,Uzal L C,Ceccatto H A,et al. Solving Nonstationary Classification Problems with Coupled Support Vector Machines. IEEE Trans on Neural Networks,2011,22(1): 37-51 [11] Shai B D,Blitzer J,Crammer K,et al. Analysis of Representations for Domain Adaptation // Schlkopf B,Platt J,Hoffman T,eds. Advances in Neural Information Processing System. Cambridge,USA: MIT Press,2007: 137-144 [12] Sriperumbudur B K,Gretton A,Fukumizu K,et al. Hilbert Space Embeddings and Metrics on Probability Measures. Journal of Machine Learning Research,2010,11(4): 1517-1561 [13] Gretton A,Fukumizu K,Harchaoui Z,et al. A Fast Consistent Kernel Two-Sample Test.[EB/OL] [2012-5-1].http://www.is.tuebingen.mpg.de/fileadmin/user_upload/files/publications/NIPS2009-Gretton_[0].pdf [14] Quanz B,Huan J. Large Margin Transductive Transfer Learning // Proc of the 18th ACM Conference on Information and Knowledge Management. New York,USA,2009: 1327-1336 [15] Bruzzone L,Marconcini M. Domain Adaptation Problems: A DASVM Classification Technique and a Circular Validation Strategy. IEEE Trans on Pattern Analysis and Machine Intelligence,2010,32(5): 770-787 [16] Grinblat G L,Granitto P M,Ceccatto H A. Time-Adaptive Support Vector Machines. IberoAmerican Joumal of Artificial Intelligence,2008,12(40): 39-50 [17] Belkin M,Niyogi P,Sindhwani V,et al. Manifold Regularization: A Geometric Framework for Learning from Labeled and Unlabeled Examples.Journal of Machine Learning Research,2006,7(11): 2399-2434 [18] Wang Xiaoming,Wang Shitong. Ensemble Classifier Based on Minimum Class Variance SVM and Null Space Classifier. Pattern Recognition and Artificial Intelligence,2010,23(4): 441-449 (in Chinese) (王晓明,王士同.最小类方差支持向量机与零空间分类器的集成.模式识别与人工智能,2010,23(4): 441-449) [19] Tao Jianwen,Wang Shitong. Kernel Support Vector Machine for Domain Adaptation. Acta Automatica Sinica,2012,38(5): 797-881 (in Chinese) (陶剑文,王士同.领域适应核支持向量机.自动化学报,2012,38(5):797-881) [20] Chang C C,Lin C J. LIBSVM: A Library for Support Vector Machines. [EB/OL] [2010-10-26]. http://www.csie.ntu.edu.tw/~cjlin/ papers/libsvm.pdf [21] Harries M.Splice-2 Comparative Evaluation: Electricity Pricing. Technical Report,NSW-CSE-TR-9905. Sydney,Australia: University of South Wales,1999