Learning from local and global discriminative information for semi-supervised dimensionality reduction

Semi-supervised dimensionality reduction is an important research topic in many pattern recognition and machine learning applications. Among all the methods for semi-supervised dimensionality reduction, SDA and LapRLS are two popular ones. Though the two methods are actually the extensions of different supervised methods, we show in this paper that they can be unified into a regularized least square framework. However, the regularization term added to the framework focuses on smoothing only, it cannot fully utilize the underlying discriminative information which is vital for classification. In this paper, we propose a new effective semi-supervised dimensionality reduction method, called LLGDI, to solve the above problem. The proposed LLGDI method introduces a discriminative manifold regularization term by using the local discriminative information instead of only relying on neighborhood information. In this way, both the local geometrical and discriminative information of dataset can be preserved by the proposed LLGDI method. Theoretical analysis and extensive simulations show the effectiveness of our algorithm. The results in simulations demonstrate that our proposed algorithm can achieve great superiority compared with other existing methods.

[1]  J. Friedman Regularized Discriminant Analysis , 1989 .

[2]  Alex Pentland,et al.  Face recognition using eigenfaces , 1991, Proceedings. 1991 IEEE Computer Society Conference on Computer Vision and Pattern Recognition.

[3]  David J. Kriegman,et al.  Eigenfaces vs. Fisherfaces: Recognition Using Class Specific Linear Projection , 1996, ECCV.

[4]  Zoubin Ghahramani,et al.  Combining active learning and semi-supervised learning using Gaussian fields and harmonic functions , 2003, ICML 2003.

[5]  Bernhard Schölkopf,et al.  Learning with Local and Global Consistency , 2003, NIPS.

[6]  Yuxiao Hu,et al.  Face recognition using Laplacianfaces , 2005, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[7]  Mikhail Belkin,et al.  Manifold Regularization: A Geometric Framework for Learning from Labeled and Unlabeled Examples , 2006, J. Mach. Learn. Res..

[8]  Jieping Ye,et al.  Least squares linear discriminant analysis , 2007, ICML '07.

[9]  Stephen Lin,et al.  Graph Embedding and Extensions: A General Framework for Dimensionality Reduction , 2007, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[10]  Jiawei Han,et al.  Semi-supervised Discriminant Analysis , 2007, 2007 IEEE 11th International Conference on Computer Vision.

[11]  Xuelong Li,et al.  Patch Alignment for Dimensionality Reduction , 2009, IEEE Transactions on Knowledge and Data Engineering.

[12]  Ivor W. Tsang,et al.  Flexible Manifold Embedding: A Framework for Semi-Supervised and Unsupervised Dimension Reduction , 2010, IEEE Transactions on Image Processing.

[13]  Feiping Nie,et al.  A general kernelization framework for learning algorithms based on kernel PCA , 2010, Neurocomputing.

[14]  Zhihua Zhang,et al.  Regularized Discriminant Analysis, Ridge Regression and Beyond , 2010, J. Mach. Learn. Res..

[15]  Yi Yang,et al.  Image Clustering Using Local Discriminant Models and Global Integration , 2010, IEEE Transactions on Image Processing.

[16]  Jieping Ye,et al.  A scalable two-stage approach for a class of dimensionality reduction techniques , 2010, KDD.

[17]  Tommy W. S. Chow,et al.  Trace ratio criterion based generalized discriminative learning for semi-supervised dimensionality reduction , 2012, Pattern Recognit..

[18]  Tommy W. S. Chow,et al.  Marginal semi-supervised sub-manifold projections with informative constraints for dimensionality reduction and recognition , 2012, Neural Networks.

[19]  Tommy W. S. Chow,et al.  Constrained large Margin Local Projection algorithms and extensions for multimodal dimensionality reduction , 2012, Pattern Recognit..

[20]  Tommy W. S. Chow,et al.  Trace Ratio Optimization-Based Semi-Supervised Nonlinear Dimensionality Reduction for Marginal Manifold Visualization , 2013, IEEE Transactions on Knowledge and Data Engineering.

[21]  Tommy W. S. Chow,et al.  M-Isomap: Orthogonal Constrained Marginal Isomap for Nonlinear Dimensionality Reduction , 2013, IEEE Transactions on Cybernetics.

[22]  Zhao Zhang,et al.  A soft label based linear discriminant analysis for semi-supervised dimensionality reduction , 2013, The 2013 International Joint Conference on Neural Networks (IJCNN).

[23]  Tommy W. S. Chow,et al.  Binary- and Multi-class Group Sparse Canonical Correlation Analysis for Feature Extraction and Classification , 2013, IEEE Transactions on Knowledge and Data Engineering.

[24]  Tommy W. S. Chow,et al.  A general soft label based Linear Discriminant Analysis for semi-supervised dimensionality reduction , 2014, Neural Networks.