International audienceWe consider a reformulation of Reduced-Rank Regression (RRR) and Sparse Reduced-Rank Regression (SRRR) as a non-convex non-differentiable function of a single of the two matrices usually introduced to parametrize low-rank matrix learning problems. We study the behavior of proximal gradient algorithms for the minimization of the objective. In particular, based on an analysis of the geometry of the problem, we establish that a proximal Polyak-Łojasiewicz inequality is satisfied in a neighborhood of the set of optima under a condition on the regularization parameter. We consequently derive linear convergence rates for the proximal gradient descent with line search and for related algorithms in a neighborhood of the optima...
We investigate implicit regularization schemes for gradient descent methods applied to unpenalized l...
Motivated by the problem of learning a linear regression model whose parameter is a large fixed-rank...
We present a feature selection method for solving sparse regularization problem, which hasa composit...
International audienceWe consider a reformulation of Reduced-Rank Regression (RRR) and Sparse Reduce...
Sparse representation and low-rank approximation are fundamental tools in fields of signal processin...
This paper considers the problem of recovering either a low rank matrix or a sparse vector from obse...
This paper explores a new framework for reinforcement learning based on online convex optimization, ...
In this paper, we present an accelerated numerical method based on random projection for sparse line...
In this paper we study the problem of learning a low-rank (sparse) distance ma-trix. We propose a no...
Abstract. Proximal methods have recently been shown to provide ef-fective optimization procedures to...
Nowadays, the explosive data scale increase provides an unprecedented opportunity to apply machine l...
An algorithmic framework, based on the difference of convex functions algorithm, is proposed for min...
Abstract—This paper studies algorithms for solving the prob-lem of recovering a low-rank matrix with...
Owing to their statistical properties, non-convex sparse regularizers have attracted much interest f...
This paper provides a proof of global convergence of gradient search for low-rank matrix approximati...
We investigate implicit regularization schemes for gradient descent methods applied to unpenalized l...
Motivated by the problem of learning a linear regression model whose parameter is a large fixed-rank...
We present a feature selection method for solving sparse regularization problem, which hasa composit...
International audienceWe consider a reformulation of Reduced-Rank Regression (RRR) and Sparse Reduce...
Sparse representation and low-rank approximation are fundamental tools in fields of signal processin...
This paper considers the problem of recovering either a low rank matrix or a sparse vector from obse...
This paper explores a new framework for reinforcement learning based on online convex optimization, ...
In this paper, we present an accelerated numerical method based on random projection for sparse line...
In this paper we study the problem of learning a low-rank (sparse) distance ma-trix. We propose a no...
Abstract. Proximal methods have recently been shown to provide ef-fective optimization procedures to...
Nowadays, the explosive data scale increase provides an unprecedented opportunity to apply machine l...
An algorithmic framework, based on the difference of convex functions algorithm, is proposed for min...
Abstract—This paper studies algorithms for solving the prob-lem of recovering a low-rank matrix with...
Owing to their statistical properties, non-convex sparse regularizers have attracted much interest f...
This paper provides a proof of global convergence of gradient search for low-rank matrix approximati...
We investigate implicit regularization schemes for gradient descent methods applied to unpenalized l...
Motivated by the problem of learning a linear regression model whose parameter is a large fixed-rank...
We present a feature selection method for solving sparse regularization problem, which hasa composit...