Title of article :
Semi-supervised learning with nuclear norm regularization
Author/Authors :
Shang، نويسنده , , Fanhua and Jiao، نويسنده , , L.C. and Liu، نويسنده , , Yuanyuan and Tong، نويسنده , , Hanghang and Hamada، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2013
Abstract :
Integrating new knowledge sources into various learning tasks to improve their performance has recently become an interesting topic. In this paper we propose a novel semi-supervised learning (SSL) approach, called semi-supervised learning with nuclear norm regularization (SSL-NNR), which can simultaneously handle both sparse labeled data and additional pairwise constraints together with unlabeled data. Specifically, we first construct a unified SSL framework to combine the manifold assumption and the pairwise constraints assumption for classification tasks. Then we provide a modified fixed point continuous algorithm to learn a low-rank kernel matrix that takes advantage of Laplacian spectral regularization. Finally, we develop a two-stage optimization strategy, and present a semi-supervised classification algorithm with enhanced spectral kernel (ESK). Moreover, we also present a theoretical analysis of the proposed ESK algorithm, and derive an easy approach to extend it to out-of-sample data. Experimental results on a variety of synthetic and real-world data sets demonstrate the effectiveness of the proposed ESK algorithm.
Keywords :
Nuclear norm regularization , Graph Laplacian , Pairwise constraints , Semi-supervised learning (SSL) , Low-rank kernel learning
Journal title :
PATTERN RECOGNITION
Journal title :
PATTERN RECOGNITION