Regularization techniques are widely employed in optimization-based approaches for solving ill-posed inverse problems in data analysis and scientific computing. These methods are based on augmenting the objective with a penalty function, which is specified based on prior domain-specific expertise to induce a desired structure in the solution. We consider the problem of learning suitable regularization functions from data in settings in which precise domain knowledge is not directly available. Previous work under the title of `dictionary learning' or `sparse coding' may be viewed as learning a regularization function that can be computed via linear programming. We describe generalizations of these methods to learn regularizers that can be co...
Standard regularization methods that are used to compute solutions to ill-posed inverse problems req...
The goal of the sparse approximation problem is to approximate a target signal using a linear combin...
We present a method for supervised learning of sparsity-promoting regularizers for denoising signals...
Regularization techniques are widely employed in optimization-based approaches for solving ill-posed...
Regularization techniques are widely employed in optimization-based approaches for solving ill-posed...
In this paper we propose a general framework to characterize and solve the optimization problems und...
Thesis (Ph.D.)--University of Washington, 2016-08Design and analysis of tractable methods for estima...
Sparse representation and low-rank approximation are fundamental tools in fields of signal processin...
We introduce and study a mathematical framework for a broad class of regularization functionals for ...
Learning approaches have recently become very popular in the field of inverse problems. A large vari...
International audienceThe computational cost of many signal processing and machine learning techniqu...
Inverse problems and regularization theory is a central theme in contemporary signal processing, whe...
Various regularization techniques are investigated in supervised learning from data. Theoretical fea...
We study norms that can be used as penalties in machine learning problems. In particular, we conside...
Non-convex sparsity-inducing penalties outperform their convex counterparts, but generally sacrifice...
Standard regularization methods that are used to compute solutions to ill-posed inverse problems req...
The goal of the sparse approximation problem is to approximate a target signal using a linear combin...
We present a method for supervised learning of sparsity-promoting regularizers for denoising signals...
Regularization techniques are widely employed in optimization-based approaches for solving ill-posed...
Regularization techniques are widely employed in optimization-based approaches for solving ill-posed...
In this paper we propose a general framework to characterize and solve the optimization problems und...
Thesis (Ph.D.)--University of Washington, 2016-08Design and analysis of tractable methods for estima...
Sparse representation and low-rank approximation are fundamental tools in fields of signal processin...
We introduce and study a mathematical framework for a broad class of regularization functionals for ...
Learning approaches have recently become very popular in the field of inverse problems. A large vari...
International audienceThe computational cost of many signal processing and machine learning techniqu...
Inverse problems and regularization theory is a central theme in contemporary signal processing, whe...
Various regularization techniques are investigated in supervised learning from data. Theoretical fea...
We study norms that can be used as penalties in machine learning problems. In particular, we conside...
Non-convex sparsity-inducing penalties outperform their convex counterparts, but generally sacrifice...
Standard regularization methods that are used to compute solutions to ill-posed inverse problems req...
The goal of the sparse approximation problem is to approximate a target signal using a linear combin...
We present a method for supervised learning of sparsity-promoting regularizers for denoising signals...