Factorizing low-rank matrices is a problem with many applications in machine learning and statistics, ranging from sparse PCA to community detection and sub-matrix localization. For probabilistic models in the Bayes optimal setting, general expressions for the mutual information have been proposed using powerful heuristic statistical physics computations via the replica and cavity methods, and proven in few specific cases by a variety of methods. Here, we use the spatial coupling methodology developed in the framework of error correcting codes, to rigorously derive the mutual information for the symmetric rank-one case. We characterize the detectability phase transitions in a large set of estimation problems , where we show that there exist...
This paper considers probabilistic estimation of a low-rank matrix from non-linear element-wise meas...
This paper considers probabilistic estimation of a low-rank matrix from non-linear element-wise meas...
This paper considers probabilistic estimation of a low-rank matrix from non-linear element-wise meas...
Factorizing low-rank matrices is a problem with many applications in machine learning and statistics...
Factorizing low-rank matrices is a problem with many applications in machine learning and statistics...
Factorizing low-rank matrices has many applications in machine learning and statistics. For probabil...
Factorizing low-rank matrices has many applications in machine learning and statistics. For probabil...
Factorizing low-rank matrices has many applications in machine learning and statistics. For probabil...
Factorizing low-rank matrices has many applications in machine learning and statistics. For probabil...
We study the problem of detecting a structured, low-rank signal matrix corrupted with additive Gauss...
MISTEAInternational audienceWe study the problem of detecting a structured, low-rank signal matrix c...
We consider the high-dimensional inference problem where the signal is a low-rank symmetric matrix w...
International audienceWe study the problem of detecting a structured, lowrank signal matrix corrupte...
International audienceWe study the problem of detecting a structured, lowrank signal matrix corrupte...
We consider the estimation of a signal from the knowledge of its noisy linear random Gaussian projec...
This paper considers probabilistic estimation of a low-rank matrix from non-linear element-wise meas...
This paper considers probabilistic estimation of a low-rank matrix from non-linear element-wise meas...
This paper considers probabilistic estimation of a low-rank matrix from non-linear element-wise meas...
Factorizing low-rank matrices is a problem with many applications in machine learning and statistics...
Factorizing low-rank matrices is a problem with many applications in machine learning and statistics...
Factorizing low-rank matrices has many applications in machine learning and statistics. For probabil...
Factorizing low-rank matrices has many applications in machine learning and statistics. For probabil...
Factorizing low-rank matrices has many applications in machine learning and statistics. For probabil...
Factorizing low-rank matrices has many applications in machine learning and statistics. For probabil...
We study the problem of detecting a structured, low-rank signal matrix corrupted with additive Gauss...
MISTEAInternational audienceWe study the problem of detecting a structured, low-rank signal matrix c...
We consider the high-dimensional inference problem where the signal is a low-rank symmetric matrix w...
International audienceWe study the problem of detecting a structured, lowrank signal matrix corrupte...
International audienceWe study the problem of detecting a structured, lowrank signal matrix corrupte...
We consider the estimation of a signal from the knowledge of its noisy linear random Gaussian projec...
This paper considers probabilistic estimation of a low-rank matrix from non-linear element-wise meas...
This paper considers probabilistic estimation of a low-rank matrix from non-linear element-wise meas...
This paper considers probabilistic estimation of a low-rank matrix from non-linear element-wise meas...