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On Data-Dependent Random Features for Improved Generalization in Supervised Learning
[article]
2017
arXiv
pre-print
The randomized-feature approach has been successfully employed in large-scale kernel approximation and supervised learning. The distribution from which the random features are drawn impacts the number of features required to efficiently perform a learning task. Recently, it has been shown that employing data-dependent randomization improves the performance in terms of the required number of random features. In this paper, we are concerned with the randomized-feature approach in supervised
arXiv:1712.07102v1
fatcat:bcudauqorbehrjotutio56hsxa