Multi-label Classification Using Hypergraph Orthonormalized Partial Least Squares

In many real-world applications, human-generated data like images are often associated with several semantic topics simultaneously, called multi-label data, which poses a great challenge for classification in such scenarios. Since the topics are always not independent, it is very useful to respect the correlations among different topics for performing better classification on multi-label data. Hence, in this paper, we propose a novel method named Hypergraph Orthonormalized Partial Least Squares (HOPLS) for multi-label classification. It is fundamentally based on partial least squares with orthogonal constraints. Our approach takes into account the high-order relations among multiple labels through constructing a hypergraph, thus providing more discriminant information for training a promising multi-label classification model. Specifically, we consider such complex label relations via enforcing a regularization term on the objective function to control the model complexity and balance its contribution. Furthermore, we show that the optimal solution can be readily derived from solving a generalized eigenvalue problem. Experiments were carried out on several multi-label data sets to demonstrate the superiority of the proposed method.

[1]  Zhi-Hua Zhou,et al.  ML-KNN: A lazy learning approach to multi-label learning , 2007, Pattern Recognit..

[2]  Lior Rokach,et al.  Data Mining And Knowledge Discovery Handbook , 2005 .

[3]  Minchao Ye,et al.  A Grouped Structure-based Regularized Regression Model for Text Categorization , 2012, J. Softw..

[4]  Gustavo Camps-Valls,et al.  Efficient Kernel Orthonormalized PLS for Remote Sensing Applications , 2008, IEEE Transactions on Geoscience and Remote Sensing.

[5]  Tao Mei,et al.  Correlative multi-label video annotation , 2007, ACM Multimedia.

[6]  Lingda Wu,et al.  Gaussian Process Latent Variable Models for Inverse Kinematics , 2011, J. Multim..

[7]  Zhengguang Xu,et al.  Prediction Model based on Moving Pattern , 2012, J. Comput..

[8]  Gang Chen,et al.  Efficient multi-label classification with hypergraph regularization , 2009, 2009 IEEE Conference on Computer Vision and Pattern Recognition.

[9]  Jieping Ye,et al.  Finite Domain Constraint Solver Learning , 2009, IJCAI.

[10]  Volker Tresp,et al.  Multi-label informed latent semantic indexing , 2005, SIGIR '05.

[11]  Grigorios Tsoumakas,et al.  Mining Multi-label Data , 2010, Data Mining and Knowledge Discovery Handbook.

[12]  Grigorios Tsoumakas,et al.  Multi-Label Classification: An Overview , 2007, Int. J. Data Warehous. Min..

[13]  Min Wu,et al.  Combine multi-valued attribute decomposition with multi-label learning , 2010, Expert Syst. Appl..

[14]  Min-Ling Zhang,et al.  A Review on Multi-Label Learning Algorithms , 2014, IEEE Transactions on Knowledge and Data Engineering.

[15]  Ping Li,et al.  Multi-label dimensionality reduction based on semi-supervised discriminant analysis , 2010 .

[16]  Jieping Ye,et al.  Hypergraph spectral learning for multi-label classification , 2008, KDD.

[17]  Wencheng Wang,et al.  A Multi-focus Image Fusion Method Based on Laplacian Pyramid , 2011, J. Comput..

[18]  Yi Yang,et al.  Discriminative Orthogonal Nonnegative matrix factorization with flexibility for data representation , 2014, Expert Syst. Appl..

[19]  Xiaofei He,et al.  Locality Preserving Projections , 2003, NIPS.

[20]  Fei Wang,et al.  Tag Integrated Multi-Label Music Style Classification with Hypergraph , 2009, ISMIR.

[21]  Zhi-Hua Zhou,et al.  Multilabel dimensionality reduction via dependence maximization , 2008, TKDD.

[22]  Nasser M. Nasrabadi,et al.  Pattern Recognition and Machine Learning , 2006, Technometrics.

[23]  Min Wu,et al.  Multi-label ensemble based on variable pairwise constraint projection , 2013, Inf. Sci..

[24]  Jieping Ye,et al.  Canonical Correlation Analysis for Multilabel Classification: A Least-Squares Formulation, Extensions, and Analysis , 2011, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[25]  Chun Chen,et al.  Clustering analysis using manifold kernel concept factorization , 2012, Neurocomputing.

[26]  H. Abdi,et al.  Principal component analysis , 2010 .