There has been a recent surge of interest in the study of asymptotic reconstruction performance in various cases of generalized linear estimation problems in the teacher-student setting, especially for the case of i.i.d standard normal matrices. Here, we go beyond these matrices, and prove an analytical formula for the reconstruction performance of convex generalized linear models with rotationally-invariant data matrices with arbitrary bounded spectrum, rigorously confirming, under suitable assumptions, a conjecture originally derived using the replica method from statistical physics. The proof is achieved by leveraging on message passing algorithms and the statistical properties of their iterates, allowing to characterize the asymptotic e...
The typical scenario that arises in modern large-scale inference problems is one where the ambient d...
Nonlinear models are widely used in signal processing, statistics, and machine learning to model rea...
We study a special class of misspecified generalized linear models, where the true model is a mixed ...
15 pages main text and references, 23 pages supplementary material, 2 figuresThere has been a recent...
In the past couple of decades, non-smooth convex optimization has emerged as a powerful tool for the...
We consider the problem of signal estimation in generalized linear models defined via rotationally i...
From the sampling of data to the initialisation of parameters, randomness is ubiquitous in modern Ma...
35 pages, 3 figuresInternational audienceGeneralized linear models (GLMs) are used in high-dimension...
35 pages, 3 figuresWe consider generalized linear models where an unknown $n$-dimensional signal vec...
In this paper, we study the trace regression when a matrix of parameters B* is estimated via the con...
The recent empirical success of machine learning in all fields involving data analysis has prompted ...
In the last decade, machine learning techniques have achieved tremendous progresses and yield many a...
Abstract—We consider the estimation of an i.i.d. random vector observed through a linear transform f...
A fundamental problem in modern high-dimensional data analysis involves efficiently inferring a set ...
Modern machine learning techniques rely heavily on iterative optimization algorithms to solve high d...
The typical scenario that arises in modern large-scale inference problems is one where the ambient d...
Nonlinear models are widely used in signal processing, statistics, and machine learning to model rea...
We study a special class of misspecified generalized linear models, where the true model is a mixed ...
15 pages main text and references, 23 pages supplementary material, 2 figuresThere has been a recent...
In the past couple of decades, non-smooth convex optimization has emerged as a powerful tool for the...
We consider the problem of signal estimation in generalized linear models defined via rotationally i...
From the sampling of data to the initialisation of parameters, randomness is ubiquitous in modern Ma...
35 pages, 3 figuresInternational audienceGeneralized linear models (GLMs) are used in high-dimension...
35 pages, 3 figuresWe consider generalized linear models where an unknown $n$-dimensional signal vec...
In this paper, we study the trace regression when a matrix of parameters B* is estimated via the con...
The recent empirical success of machine learning in all fields involving data analysis has prompted ...
In the last decade, machine learning techniques have achieved tremendous progresses and yield many a...
Abstract—We consider the estimation of an i.i.d. random vector observed through a linear transform f...
A fundamental problem in modern high-dimensional data analysis involves efficiently inferring a set ...
Modern machine learning techniques rely heavily on iterative optimization algorithms to solve high d...
The typical scenario that arises in modern large-scale inference problems is one where the ambient d...
Nonlinear models are widely used in signal processing, statistics, and machine learning to model rea...
We study a special class of misspecified generalized linear models, where the true model is a mixed ...