Integrating Spectral Kernel Learning and Constraints in Semi-Supervised Classification
作者:Fanhua Shang, L. C. Jiao, Yuanyuan Liu
摘要
Recently, integrating new knowledge sources such as pairwise constraints into various classification tasks with insufficient training data has been actively studied in machine learning. In this paper, we propose a novel semi-supervised classification approach, called semi-supervised classification with enhanced spectral kernel, which can simultaneously handle both sparse labeled data and additional pairwise constraints together with unlabeled data. Specifically, we first design a non-parameter spectral kernel learning model based on the squared loss function. Then we develop an efficient semi-supervised classification algorithm which takes advantage of Laplacian spectral regularization: semi-supervised classification with enhanced spectral kernel under the squared loss (ESKS). Finally, we conduct many experiments on a variety of synthetic and real-world data sets to demonstrate the effectiveness of the proposed ESKS algorithm.
论文关键词:Semi-supervised classification (SSC), Graph Laplacian, Spectral kernel learning, Mixed knowledge information
论文评审过程:
论文官网地址:https://doi.org/10.1007/s11063-012-9224-2