Abstract:In feature selection the most representative features are selected and processed to reduce the dimensionality of feature space. A local discriminant constraint based semi-supervised feature selection method is presented in this paper. The labeled and unlabeled training samples are completely utilized to construct feature selection model, and the local discriminant information between the adjacent data is adopted to improve model accuracy. Then the l2,1 constraint is added to improve the distinguishability between these features and avoid noise interference. Finally, several state-of-the-art feature selection methods are performed to compare with the proposed algorithm. The experimental results demonstrate the effectiveness of the proposed algorithm.
严菲,王晓栋. 基于局部判别约束的半监督特征选择方法*[J]. 模式识别与人工智能, 2017, 30(1): 89-95.
YAN Fei, WANG Xiaodong. A Semi-supervised Feature Selection Method Based on Local Discriminant Constraint. , 2017, 30(1): 89-95.
[1] FUKUNAGA K. Introduction to Statistical Pattern Recognition. 2nd Endition. Boston, USA: Academic Press, 1990. [2] NIE F P, CAI X, HUANG H, et al. Efficient and Robust Feature Selection via Joint l2,1 Norms Minimization // LAFFERTY J D, WILLIAMS C K I, SHAWE-TAYLOR J, et al., eds. Advances in Neural Information Processing Systems 23. Cambridge, USA: The MIT Press, 2010: 1813-1821. [3] HE X F, CAI D, NIYOGI P. Laplacian Score for Feature Selection // Proc of the 18th International Conference on Neural Information Processing Systems. Cambridge, USA: The MIT Press, 2006: 507-514. [4] YANG Y, SHEN H T, MA Z G, et al. l2,1 Norm Regularized Discriminative Feature Selection for Unsupervised Learning[C/OL]. [2016-08-25]. http://www.ijcai.org/Proceedings/11/Papers/267.pdf. [5] 简彩仁,陈晓云.基于局部保持投影和稀疏表示的无监督特征选择方法.模式识别与人工智能, 2015, 28(3): 247-252. (JIAN C R, CHEN X Y. Unsupervised Feature Selection Based on Locality Preserving Projection and Sparse Representation. Pattern Recognition and Artificial Intelligence, 2015, 28(3): 247-252.) [6] WANG X D, ZHANG X, ZENG Z Q, et al. Unsupervised Spectral Feature Selection with l 1 Norm Graph. Neurocomputing, 2016, 200: 47-54. [7] ZHU X J. Semi-supervised Learning Literature Survey. Computer Science TR 1530. Madison, USA: University of Wisconsin-Madison, 2008. [8] WANG Y Y, CHEN S C, ZHOU Z H. New Semi-supervised Classification Method Based on Modified Cluster Assumption. IEEE Transactions on Neural Networks & Learning Systems, 2012, 23(5): 689-702. [9] DOQUIRE G, VERLEYSEN M. A Graph Laplacian Based Approach to Semi-supervised Feature Selection for Regression Pro-blems. Neurocomputing, 2013, 121(18): 5-13. [10] ZHAO Z, LIU H. Semi-supervised Feature Selection via Spectral Analysis // Proc of the 7th SIAM International Conference on Data
Mining. 2007.DOI: 10.1137/1.978/611972771.75. [11] LIU Y, NIE F P, WU J G, et al. Efficient Semi-supervised Feature Selection with Noise Insensitive Trace Ratio Criterion. Neurocomputing, 2013, 105(3): 12-18. [12] MA Z G, NIE F P, YANG Y, et al. Discriminating Joint Feature Analysis for Multimedia Data Understanding. IEEE Transactions on Multimedia, 2012, 14(6): 1662-1672. [13] CHANG X, NIE F P, YANG Y, et al. A Convex Formulation for Semi-supervised Multi-label Feature Selection // Proc of the 28th AAAI Conference on Artificial Intelligence. Palo Alto, USA: AAAI Press, 2014: 1171-1177. [14] SUGIYAMA M. Dimensionality Reduction of Multimodal Labeled Data by Local Fisher Discriminant Analysis. Journal of Machine Learning Research, 2007, 8: 1027-1061. [15] YANG Y, XU D, NIE F P, et al. Image Clustering Using Local Discriminant Models and Global Integration. IEEE Transactions on Image Processing, 2010, 19(10): 2761-2773. [16] SAUL L K, ROWEIS S T. Think Globally, Fit Locally: Unsupervised Learning of Low Dimensional Manifolds. Journal of Machine Learning Research, 2003, 4: 119-155. [17] LYONS M J, BUDYNEK J, AKAMATSU S. Automatic Classification of Single Facial Images. IEEE Transactions on Pattern Analysis and Machine Intelligence, 1999, 21(12): 1357-1362. [18] HE X F, CAI D, YAN S C, et al. Neighborhood Preserving Embedding // Proc of the 10th IEEE International Conference on Computer Vision. Washington, USA: IEEE, 2005: 1208-1213. [19] HAN Y H, XU Z W, MA Z G, et al. Image Classification with Manifold Learning for Out-of-Sample Data. Signal Processing, 2013, 93(8): 2169-2177. [20] BOUTELL M R, LOU J, SHEN X, et al. Learning Multi-label-scene Classiffication. Pattern Recognition, 2004, 37(9): 1757-1771.