We study inductive matrix completion (matrix completion with side information) under an i.i.d. subgaussian noise assumption at a low noise regime, with uniform sampling of the entries. We obtain for the first time generalization bounds with the following three properties: (1) they scale like the standard deviation of the noise and in particular approach zero in the exact recovery case; (2) even in the presence of noise, they converge to zero when the sample size approaches infinity; and (3) for a fixed dimension of the side information, they only have a logarithmic dependence on the size of the matrix. Differently from many works in approximate recovery, we present results both for bounded Lipschitz losses and for the absolute loss, with ...
A solution to low-rank matrix completion is a matrix M of rank r that is much smaller than the dimen...
Matrix Completion is the problem of recovering an unknown real-valued low-rank matrix from a subsamp...
Abstract—This paper examines a general class of matrix completion tasks where entry wise observation...
30 Pages, 1 figure; Accepted for publication at AAAI 2023We study inductive matrix completion (matri...
Consider a movie recommendation system where apart from the ratings information, side information su...
In the present paper we consider the problem of matrix completion with noise for general sampling sc...
The matrix completion problem consists in reconstructing a matrix from a sample of entries, possibly...
International audienceWe consider the matrix completion problem where the aim is to esti-mate a larg...
The matrix completion problem consists in reconstructing a matrix from a sample of entries, possi-bl...
Matrix Completion is the problem of recovering an unknown real-valued low-rank matrix from a subsamp...
We propose a general framework for reconstructing and denoising single entries of incomplete and noi...
We consider the matrix completion problem of recovering a structured matrix from noisy and partial m...
This paper studies the matrix completion problem under arbitrary sampling schemes. We propose a new ...
The paper deals with estimating the local noise robustness in a compressive sensing framework. We pr...
The problem of low-rank matrix completion has recently generated a lot of interest leading to sev-er...
A solution to low-rank matrix completion is a matrix M of rank r that is much smaller than the dimen...
Matrix Completion is the problem of recovering an unknown real-valued low-rank matrix from a subsamp...
Abstract—This paper examines a general class of matrix completion tasks where entry wise observation...
30 Pages, 1 figure; Accepted for publication at AAAI 2023We study inductive matrix completion (matri...
Consider a movie recommendation system where apart from the ratings information, side information su...
In the present paper we consider the problem of matrix completion with noise for general sampling sc...
The matrix completion problem consists in reconstructing a matrix from a sample of entries, possibly...
International audienceWe consider the matrix completion problem where the aim is to esti-mate a larg...
The matrix completion problem consists in reconstructing a matrix from a sample of entries, possi-bl...
Matrix Completion is the problem of recovering an unknown real-valued low-rank matrix from a subsamp...
We propose a general framework for reconstructing and denoising single entries of incomplete and noi...
We consider the matrix completion problem of recovering a structured matrix from noisy and partial m...
This paper studies the matrix completion problem under arbitrary sampling schemes. We propose a new ...
The paper deals with estimating the local noise robustness in a compressive sensing framework. We pr...
The problem of low-rank matrix completion has recently generated a lot of interest leading to sev-er...
A solution to low-rank matrix completion is a matrix M of rank r that is much smaller than the dimen...
Matrix Completion is the problem of recovering an unknown real-valued low-rank matrix from a subsamp...
Abstract—This paper examines a general class of matrix completion tasks where entry wise observation...