Andreas Argyriou

  1. Efficient First Order Methods for Linear Composite Regularizers.

    Authors: Massimiliano Pontil, Charles A. Micchelli, Andreas Argyriou, Lixin Shen, Yuesheng Xu
    Subjects: Learning
    Abstract

    A wide class of regularization problems in machine learning and statistics
    employ a regularization term which is obtained by composing a simple convex
    function \omega with a linear transformation. This setting includes Group Lasso
    methods, the Fused Lasso and other total variation methods, multi-task learning
    methods and many more. In this paper, we present a general approach for
    computing the proximity operator of this class of regularizers, under the
    assumption that the proximity operator of the function \omega is known in
    advance.

Syndicate content