We consider the problem of recovering elements of a low-dimensional model from under-determined linear measurements. To perform recovery, we consider the minimization of a convex regularizer subject to a data fit constraint. Given a model, we ask ourselves what is the ``best'' convex regularizer to perform its recovery. To answer this question, we define an optimal regularizer as a function that maximizes a compliance measure with respect to the model. We introduce and study several notions of compliance. We give analytical expressions for compliance measures based on the best-known recovery guarantees with the restricted isometry property. These expressions permit to show the optimality of the ℓ1-norm for sparse recovery and of the nuclear...
International audienceThe 1-norm is a good convex regularization for the recovery of sparse vectors ...
International audienceThe 1-norm is a good convex regularization for the recovery of sparse vectors ...
International audienceThe 1-norm is a good convex regularization for the recovery of sparse vectors ...
We consider the problem of recovering elements of a low-dimensional model from under-determined line...
We consider the problem of recovering elements of a low-dimensional model from under-determined line...
We consider the problem of recovering elements of a low-dimensional model from under-determined line...
We consider the problem of recovering elements of a low-dimensional model from under-determined line...
We consider the problem of recovering elements of a low-dimensional model from under-determined line...
We consider the problem of recovering elements of a low-dimensional model from under-determined line...
We consider the problem of recovering elements of a low-dimensional model from under-determined line...
We consider the problem of recovering elements of a low-dimensional model from under-determined line...
We consider the problem of recovering elements of a low-dimensional model from under-determined line...
We consider the problem of recovering elements of a low-dimensional model from under-determined line...
International audienceThe 1-norm was proven to be a good convex regularizer for the recovery of spar...
International audienceThe 1-norm was proven to be a good convex regularizer for the recovery of spar...
International audienceThe 1-norm is a good convex regularization for the recovery of sparse vectors ...
International audienceThe 1-norm is a good convex regularization for the recovery of sparse vectors ...
International audienceThe 1-norm is a good convex regularization for the recovery of sparse vectors ...
We consider the problem of recovering elements of a low-dimensional model from under-determined line...
We consider the problem of recovering elements of a low-dimensional model from under-determined line...
We consider the problem of recovering elements of a low-dimensional model from under-determined line...
We consider the problem of recovering elements of a low-dimensional model from under-determined line...
We consider the problem of recovering elements of a low-dimensional model from under-determined line...
We consider the problem of recovering elements of a low-dimensional model from under-determined line...
We consider the problem of recovering elements of a low-dimensional model from under-determined line...
We consider the problem of recovering elements of a low-dimensional model from under-determined line...
We consider the problem of recovering elements of a low-dimensional model from under-determined line...
We consider the problem of recovering elements of a low-dimensional model from under-determined line...
International audienceThe 1-norm was proven to be a good convex regularizer for the recovery of spar...
International audienceThe 1-norm was proven to be a good convex regularizer for the recovery of spar...
International audienceThe 1-norm is a good convex regularization for the recovery of sparse vectors ...
International audienceThe 1-norm is a good convex regularization for the recovery of sparse vectors ...
International audienceThe 1-norm is a good convex regularization for the recovery of sparse vectors ...