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GAP Safe screening rules for sparse multi-task and multi-class models
High dimensional regression benefits from sparsity promoting regularizations.
Screening rules leverage the known sparsity of the solution by ignoring some
variables in the optimization, hence speeding up solvers. When the procedure is
proven not to discard features wrongly the rules are said to be \emph{safe}. In
this paper we derive new safe rules for generalized linear models regularized
with and norms. The rules are based on duality gap
computations and spherical safe regions whose diameters converge to zero. This
allows to discard safely more variables, in particular for low regularization
parameters. The GAP Safe rule can cope with any iterative solver and we
illustrate its performance on coordinate descent for multi-task Lasso, binary
and multinomial logistic regression, demonstrating significant speed ups on all
tested datasets with respect to previous safe rules.Comment: in Proceedings of the 29-th Conference on Neural Information
Processing Systems (NIPS), 201
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