Graph Approximation and Clustering on a Budget
Machine Learning
2014-06-11 v1 Artificial Intelligence
Computer Vision and Pattern Recognition
Machine Learning
Abstract
We consider the problem of learning from a similarity matrix (such as spectral clustering and lowd imensional embedding), when computing pairwise similarities are costly, and only a limited number of entries can be observed. We provide a theoretical analysis using standard notions of graph approximation, significantly generalizing previous results (which focused on spectral clustering with two clusters). We also propose a new algorithmic approach based on adaptive sampling, which experimentally matches or improves on previous methods, while being considerably more general and computationally cheaper.
Cite
@article{arxiv.1406.2602,
title = {Graph Approximation and Clustering on a Budget},
author = {Ethan Fetaya and Ohad Shamir and Shimon Ullman},
journal= {arXiv preprint arXiv:1406.2602},
year = {2014}
}