Unsupervised Feature Selection Using Nonnegative Spectral Analysis

In this paper, a new unsupervised learning algorithm, namely Nonnegative Discriminative Feature Selection (NDFS), is proposed. To exploit the discriminative information in unsupervised scenarios, we perform spectral clustering to learn the cluster labels of the input samples, during which the feature selection is performed simultaneously. The joint learning of the cluster labels and feature selection matrix enables NDFS to select the most discriminative features. To learn more accurate cluster labels, a nonnegative constraint is explicitly imposed to the class indicators. To reduce the redundant or even noisy features, l2,1-norm minimization constraint is added into the objective function, which guarantees the feature selection matrix sparse in rows. Our algorithm exploits the discriminative information and feature correlation simultaneously to select a better feature subset. A simple yet efficient iterative algorithm is designed to optimize the proposed objective function. Experimental results on different real world datasets demonstrate the encouraging performance of our algorithm over the state-of-the-arts.

[1]  B. Ripley,et al.  Pattern Recognition , 1968, Nature.

[2]  Jing-Yu Yang,et al.  Optimal discriminant plane for a small number of samples and design method of classifier on the plane , 1991, Pattern Recognit..

[3]  Andy Harter,et al.  Parameterisation of a stochastic model for human face identification , 1994, Proceedings of 1994 IEEE Workshop on Applications of Computer Vision.

[4]  Dimitri P. Bertsekas,et al.  Nonlinear Programming , 1997 .

[5]  Anil K. Jain,et al.  Feature Selection: Evaluation, Application, and Small Sample Performance , 1997, IEEE Trans. Pattern Anal. Mach. Intell..

[6]  Jitendra Malik,et al.  Normalized cuts and image segmentation , 1997, Proceedings of IEEE Computer Society Conference on Computer Vision and Pattern Recognition.

[7]  Tom M. Mitchell,et al.  Learning to Extract Symbolic Knowledge from the World Wide Web , 1998, AAAI/IAAI.

[8]  Michael J. Lyons,et al.  Automatic Classification of Single Facial Images , 1999, IEEE Trans. Pattern Anal. Mach. Intell..

[9]  H. Sebastian Seung,et al.  Learning the parts of objects by non-negative matrix factorization , 1999, Nature.

[10]  Mikhail Belkin,et al.  Laplacian Eigenmaps and Spectral Techniques for Embedding and Clustering , 2001, NIPS.

[11]  Michael I. Jordan,et al.  On Spectral Clustering: Analysis and an algorithm , 2001, NIPS.

[12]  Robert Tibshirani,et al.  1-norm Support Vector Machines , 2003, NIPS.

[13]  Alain Rakotomamonjy,et al.  Variable Selection Using SVM-based Criteria , 2003, J. Mach. Learn. Res..

[14]  Jianbo Shi,et al.  Multiclass spectral clustering , 2003, Proceedings Ninth IEEE International Conference on Computer Vision.

[15]  Isabelle Guyon,et al.  An Introduction to Variable and Feature Selection , 2003, J. Mach. Learn. Res..

[16]  J. Crowley,et al.  Estimating Face orientation from Robust Detection of Salient Facial Structures , 2004 .

[17]  Deng Cai,et al.  Laplacian Score for Feature Selection , 2005, NIPS.

[18]  Yi Liu,et al.  Semi-supervised Multi-label Learning by Constrained Non-negative Matrix Factorization , 2006, AAAI.

[19]  Huan Liu,et al.  Spectral feature selection for supervised and unsupervised learning , 2007, ICML '07.

[20]  Meng Wang,et al.  Unified Video Annotation via Multigraph Learning , 2009, IEEE Transactions on Circuits and Systems for Video Technology.

[21]  Meng Wang,et al.  Beyond Distance Measurement: Constructing Neighborhood Similarity for Video Annotation , 2009, IEEE Transactions on Multimedia.

[22]  Feiping Nie,et al.  Efficient and Robust Feature Selection via Joint ℓ2, 1-Norms Minimization , 2010, NIPS.

[23]  Deng Cai,et al.  Unsupervised feature selection for multi-cluster data , 2010, KDD.

[24]  Jennifer G. Dy,et al.  From Transformation-Based Dimensionality Reduction to Feature Selection , 2010, ICML.

[25]  Rongrong Ji,et al.  Nonnegative Spectral Clustering with Discriminative Regularization , 2011, AAAI.

[26]  Zi Huang,et al.  Proceedings of the Twenty-Second International Joint Conference on Artificial Intelligence ℓ2,1-Norm Regularized Discriminative Feature Selection for Unsupervised Learning , 2022 .

[27]  Xindong Wu,et al.  Feature selection using hierarchical feature clustering , 2011, CIKM '11.

[28]  Chris H. Q. Ding,et al.  Robust nonnegative matrix factorization using L21-norm , 2011, CIKM '11.

[29]  K. Schittkowski,et al.  NONLINEAR PROGRAMMING , 2022 .