We investigate implicit regularization schemes for gradient descent methods applied to unpenalized least squares regression to solve the problem of reconstructing a sparse signal from an underdetermined system of linear measurements under the restricted isometry assumption. For a given parametrization yielding a non-convex optimization problem, we show that prescribed choices of initialization, step size and stopping time yield a statistically and computationally optimal algorithm that achieves the minimax rate with the same cost required to read the data up to poly-logarithmic factors. Beyond minimax optimality, we show that our algorithm adapts to instance difficulty and yields a dimension-independent rate when the signal-to-noise ratio i...
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...
Many problems in signal processing and statistical inference are based on finding a sparse solution ...
We investigate implicit regularization schemes for gradient descent methods applied to unpenalized l...
Model selection and sparse recovery are two important problems for which many regularization methods...
An algorithmic framework, based on the difference of convex functions algorithm, is proposed for min...
We study iterative/implicit regularization for linear models, when the bias is convex but not necess...
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...
Many problems in signal processing and statistical inference are based on finding a sparse solution ...
We investigate implicit regularization schemes for gradient descent methods applied to unpenalized l...
Model selection and sparse recovery are two important problems for which many regularization methods...
An algorithmic framework, based on the difference of convex functions algorithm, is proposed for min...
We study iterative/implicit regularization for linear models, when the bias is convex but not necess...
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...
Many problems in signal processing and statistical inference are based on finding a sparse solution ...