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An O(nlog(n))O(n\log(n)) Algorithm for Projecting Onto the Ordered Weighted 1\ell_1 Norm Ball

Abstract

The ordered weighted 1\ell_1 (OWL) norm is a newly developed generalization of the Octogonal Shrinkage and Clustering Algorithm for Regression (OSCAR) norm. This norm has desirable statistical properties and can be used to perform simultaneous clustering and regression. In this paper, we show how to compute the projection of an nn-dimensional vector onto the OWL norm ball in O(nlog(n))O(n\log(n)) operations. In addition, we illustrate the performance of our algorithm on a synthetic regression test.

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