The Nystrom sampling provides an efficient approach for large scale clustering problems, by generating a low-rank matrix approximation. However, existing sampling methods are limited by their accuracies and computing times. Here we propose a scalable Nystrom-based clustering algorithm with a new sampling procedure, called: Minimum Sum of Squared Similarities (MSSS).

Publication

  • Bouneffouf D., Birol I.: Sampling with Minimum Sum of Squared Similarities for Nystrom-Based Large Scale Spectral Clustering.  Proceedings of the Twenty-Fourth international joint conference on Artificial Intelligence (IJCAI) , 2015-July.

Current Release

MSSS 1.0

Released Jun 05, 2015

Sampling with Minimum Sum of Squared Similarities for Nystrom-Based Large Scale Spectral Clustering

All Releases

Version Released Description Licenses Status
1.0 Jun 05, 2015 Sampling with Minimum Sum of Squared Similarities for Nystrom-Based Large Scale Spectral Clustering BCCA (academic use) final
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