Spatially-Aware Comparison and Consensus for Clusterings
Abstract
This paper proposes a new distance metric between clusterings that incorporates information about the spatial distribution of points and clusters. Our approach builds on the idea of a Hilbert space-based representation of clusters as a combination of the representations of their constituent points. We use this representation and the underlying metric to design a spatially-aware consensus clustering procedure. This consensus procedure is implemented via a novel reduction to Euclidean clustering, and is both simple and efficient. All of our results apply to both soft and hard clusterings. We accompany these algorithms with a detailed experimental evaluation that demonstrates the efficiency and quality of our techniques.
Cite
@article{arxiv.1102.0026,
title = {Spatially-Aware Comparison and Consensus for Clusterings},
author = {Parasaran Raman and Jeff M. Phillips and Suresh Venkatasubramanian},
journal= {arXiv preprint arXiv:1102.0026},
year = {2015}
}
Comments
12 Pages, 9 figures, Proceedings of 2011 Siam International Conference on Data Mining