On the Nyström Method for Approximating a Gram Matrix for Improved Kernel-Based Learning

428 indexed citations

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This paper, published in 2005, received 428 indexed citations. Written by Petros Drineas and Michael W. Mahoney covering the research area of Computational Mathematics, Artificial Intelligence and Computational Mechanics. It is primarily cited by scholars working on Artificial Intelligence (245 citations), Computer Vision and Pattern Recognition (189 citations) and Computational Mechanics (166 citations). Published in Journal of Machine Learning Research.

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