Semi-supervised Learning on Directed Graphs
Zhou, Dengyong, Hofmann, Thomas, Schölkopf, Bernhard
–Neural Information Processing Systems
Given a directed graph in which some of the nodes are labeled, we investigate thequestion of how to exploit the link structure of the graph to infer the labels of the remaining unlabeled nodes. To that extent we propose a regularization framework for functions defined over nodes of a directed graph that forces the classification function to change slowly on densely linked subgraphs. A powerful, yet computationally simple classification algorithm is derived within the proposed framework. The experimental evaluation on real-world Web classification problems demonstrates encouraging resultsthat validate our approach.
Neural Information Processing Systems
Dec-31-2005