A Family of Penalty Functions for Structured Sparsity
Morales, Jean, Micchelli, Charles A., Pontil, Massimiliano
–Neural Information Processing Systems
We study the problem of learning a sparse linear regression vector under additional conditions on the structure of its sparsity pattern. We present a family of convex penalty functions, which encode this prior knowledge by means of a set of constraints on the absolute values of the regression coefficients. This family subsumes the $\ell_1$ norm and is flexible enough to include different models of sparsity patterns, which are of practical and theoretical importance. We establish some important properties of these functions and discuss some examples where they can be computed explicitly. Moreover, we present a convergent optimization algorithm for solving regularized least squares with these penalty functions.
Neural Information Processing Systems
Feb-15-2020, 02:28:18 GMT
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