Efficient projections onto the<i>l</i><sub>1</sub>-ball for learning in high dimensions

John C. Duchi(Google (United States)), Shai Shalev‐Shwartz(Toyota Technological Institute), Yoram Singer(Google (United States)), Tushar Chandra(Google (United States))
Unknown
January 1, 2008
Cited by 1,231

Abstract

We describe efficient algorithms for projecting a vector onto the ℓ1-ball. We present two methods for projection. The first performs exact projection in O(n) expected time, where n is the dimension of the space. The second works on vectors k of whose elements are perturbed outside the ℓ1-ball, projecting in O(k log(n)) time. This setting is especially useful for online learning in sparse feature spaces such as text categorization applications. We demonstrate the merits and effectiveness of our algorithms in numerous batch and online learning tasks. We show that variants of stochastic gradient projection methods augmented with our efficient projection procedures outperform interior point methods, which are considered state-of-the-art optimization techniques. We also show that in online settings gradient updates with ℓ1 projections outperform the exponentiated gradient algorithm while obtaining models with high degrees of sparsity. 1.


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