Fastfood: approximating kernel expansions in loglinear time

Published: Jun 16, 2013
Abstract
Despite their successes, what makes kernel methods difficult to use in many large scale problems is the fact that computing the decision function is typically expensive, especially at prediction time. In this paper, we overcome this difficulty by proposing Fastfood, an approximation that accelerates such computation significantly. Key to Fastfood is the observation that Hadamard matrices when combined with diagonal Gaussian matrices exhibit...
Paper Details
Title
Fastfood: approximating kernel expansions in loglinear time
Published Date
Jun 16, 2013
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