Active Constrained Clustering by Examining Spectral Eigenvectors

TitleActive Constrained Clustering by Examining Spectral Eigenvectors
Publication TypeBook Chapters
Year of Publication2005
AuthorsXu Q, desJardins M, Wagstaff K
EditorHoffmann A, Motoda H, Scheffer T
Book TitleDiscovery ScienceDiscovery Science
Series TitleLecture Notes in Computer Science
Volume3735
Pagination294 - 307
PublisherSpringer Berlin / Heidelberg
ISBN Number978-3-540-29230-2
Abstract

This work focuses on the active selection of pairwise constraints for spectral clustering. We develop and analyze a technique for Active Constrained Clustering by Examining Spectral eigenvectorS (ACCESS) derived from a similarity matrix. The ACCESS method uses an analysis based on the theoretical properties of spectral decomposition to identify data items that are likely to be located on the boundaries of clusters, and for which providing constraints can resolve ambiguity in the cluster descriptions. Empirical results on three synthetic and five real data sets show that ACCESS significantly outperforms constrained spectral clustering using randomly selected constraints.

URLhttp://dx.doi.org/10.1007/11563983_25