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Decreasing Weighted Sorted 1\ell_1 Regularization

Abstract

We consider a new family of regularizers, termed {\it weighted sorted 1\ell_1 norms} (WSL1), which generalizes the recently introduced {\it octagonal shrinkage and clustering algorithm for regression} (OSCAR) and also contains the 1\ell_1 and \ell_{\infty} norms as particular instances. We focus on a special case of the WSL1, the {\sl decreasing WSL1} (DWSL1), where the elements of the argument vector are sorted in non-increasing order and the weights are also non-increasing. In this paper, after showing that the DWSL1 is indeed a norm, we derive two key tools for its use as a regularizer: the dual norm and the Moreau proximity operator.

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