We investigate the effectiveness of spectral methods in clustering multi-scale data, which is data whose clusters are of various sizes and densities. We review existing spectral methods that are designed to handle multi-scale data and propose an alternative approach that is orthogonal to existing methods. We put forward the algorithm ROSC, which computes an affinity matrix that takes into account both objects' feature similarity and reachability similarity. We perform extensive experiments comparing ROSC against 9 other methods on both real and synthetic datasets. Our results show that ROSC performs very well against the competitors. In particular, it is very robust in that it consistently performs well over all the datasets tested. Also, it outperforms others by wide margins for datasets that are highly multi-scale.
CITATION STYLE
Li, X., Kao, B., Luo, S., & Ester, M. (2018). ROSC: Robust spectral clustering on multi-scale data. In The Web Conference 2018 - Proceedings of the World Wide Web Conference, WWW 2018 (pp. 157–166). Association for Computing Machinery, Inc. https://doi.org/10.1145/3178876.3185993
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