Semi-supervised Learning on Directed Graphs

Part of Advances in Neural Information Processing Systems 17 (NIPS 2004)

Bibtex Metadata Paper

Authors

Dengyong Zhou, Thomas Hofmann, Bernhard Schölkopf

Abstract

Given a directed graph in which some of the nodes are labeled, we inves- tigate the question 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 de(cid:2)ned over nodes of a directed graph that forces the classi(cid:2)cation function to change slowly on densely linked subgraphs. A powerful, yet computationally simple classi(cid:2)cation algorithm is derived within the proposed framework. The experimental evaluation on real-world Web classi(cid:2)cation problems demonstrates en- couraging results that validate our approach.