Robust multi-class transductive learning with graphs

Graph-based methods form a main category of semi-supervised learning, offering flexibility and easy implementation in many applications. However, the performance of these methods is often sensitive to the construction of a neighborhood graph, which is non-trivial for many real-world problems. In this paper, we propose a novel framework that builds on learning the graph given labeled and unlabeled data. The paper has two major contributions. Firstly, we use a nonparametric algorithm to learn the entire adjacency matrix of a symmetry-favored k-NN graph, assuming that the matrix is doubly stochastic. The nonparametric algorithm makes the constructed graph highly robust to noisy samples and capable of approximating underlying submanifolds or clusters. Secondly, to address multi-class semi-supervised classification, we formulate a constrained label propagation problem on the learned graph by incorporating class priors, leading to a simple closed-form solution. Experimental results on both synthetic and real-world datasets show that our approach is significantly better than the state-of-the-art graph-based semi-supervised learning algorithms in terms of accuracy and robustness.

[1]  Nicolas Le Roux,et al.  Label Propagation and Quadratic Criterion , 2006, Semi-Supervised Learning.

[2]  Mikhail Belkin,et al.  Manifold Regularization : A Geometric Framework for Learning from Examples , 2004 .

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

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

[5]  Zhenguo Li,et al.  Noise Robust Spectral Clustering , 2007, 2007 IEEE 11th International Conference on Computer Vision.

[6]  Xiaojin Zhu,et al.  --1 CONTENTS , 2006 .

[7]  S. Sathiya Keerthi,et al.  Branch and Bound for Semi-Supervised Support Vector Machines , 2006, NIPS.

[8]  Patrick J. Flynn,et al.  Overview of the face recognition grand challenge , 2005, 2005 IEEE Computer Society Conference on Computer Vision and Pattern Recognition (CVPR'05).

[9]  Amnon Shashua,et al.  Doubly Stochastic Normalization for Spectral Clustering , 2006, NIPS.

[10]  Charles R. Johnson,et al.  Matrix analysis , 1985, Statistical Inference for Engineers and Data Scientists.

[11]  Matthias Hein,et al.  Manifold Denoising , 2006, NIPS.

[12]  Xinhua Zhang,et al.  Hyperparameter Learning for Graph Based Semi-supervised Learning Algorithms , 2006, NIPS.

[13]  Thorsten Joachims,et al.  Transductive Inference for Text Classification using Support Vector Machines , 1999, ICML.

[14]  Xiaobo Zhou,et al.  Active microscopic cellular image annotation by superposable graph transduction with imbalanced labels , 2008, 2008 IEEE Conference on Computer Vision and Pattern Recognition.

[15]  Mikhail Belkin,et al.  Beyond the point cloud: from transductive to semi-supervised learning , 2005, ICML.