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Most Influential ICML 2005 Paper · 2026-03 edition

Semi-supervised Graph Clustering: A Kernel Approach

Brian Kulis; Sugato Basu; Inderjit Dhillon; Raymond Mooney

Venue
International Conference on Machine Learning (ICML) 2005
Recognition
Most Influential ICML 2005 Paper (Rank No. 9)
Edition
2026-03
Impact factor
7
Certificate ID
e198ef7d0e50c807

Abstract

Semi-supervised clustering algorithms aim to improve clustering results using limited supervision. The supervision is generally given as pairwise constraints; such constraints are natural for graphs, yet most semi-supervised clustering algorithms are designed for data represented as vectors. In this paper, we unify vector-based and graph-based approaches. We show that a recently-proposed objective function for semi-supervised clustering based on Hidden Markov Random Fields, with squared Euclidean distance and a certain class of constraint penalty functions, can be expressed as a special case of the weighted kernel <i>k</i>-means objective. A recent theoretical connection between kernel <i>k</i>-means and several graph clustering objectives enables us to perform semi-supervised clustering of data given either as vectors or as a graph. For vector data, the kernel approach also enables us to find clusters with non-linear boundaries in the input data space. Furthermore, we show that recent work on spectral learning (Kamvar et al., 2003) may be viewed as a special case of our formulation. We empirically show that our algorithm is able to outperform current state-of-the-art semi-supervised algorithms on both vector-based and graph-based data sets.

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