PAPER DIGEST
Most Influential KDD 2004 Paper · 2026-03 edition

A Probabilistic Framework For Semi-supervised Clustering

Sugato Basu; Mikhail Bilenko; Raymond J. Mooney

Venue
ACM SIGKDD Conference (KDD) 2004
Recognition
Most Influential KDD 2004 Paper (Rank No. 5)
Edition
2026-03
Impact factor
8
Certificate ID
ad0574088a2f2ad5

Abstract

Unsupervised clustering can be significantly improved using supervision in the form of pairwise constraints, i.e., pairs of instances labeled as belonging to same or different clusters. In recent years, a number of algorithms have been proposed for enhancing clustering quality by employing such supervision. Such methods use the constraints to either modify the objective function, or to learn the distance measure. We propose a probabilistic model for semi-supervised clustering based on Hidden Markov Random Fields (HMRFs) that provides a principled framework for incorporating supervision into prototype-based clustering. The model generalizes a previous approach that combines constraints and Euclidean distance learning, and allows the use of a broad range of clustering distortion measures, including Bregman divergences (e.g., Euclidean distance and I-divergence) and directional similarity measures (e.g., cosine similarity). We present an algorithm that performs partitional semi-supervised clustering of data by minimizing an objective function derived from the posterior energy of the HMRF model. Experimental results on several text data sets demonstrate the advantages of the proposed framework.

Download PDF certificate