We consider the estimation of a signal from the knowledge of its noisy linear random Gaussian projections. A few examples where this problem is relevant are compressed sensing, sparse superposition codes, and code division multiple access. There has been a number of works considering the mutual information for this problem using the replica method from statistical physics. Here we put these considerations on a firm rigorous basis. First, we show, using a Guerra-Toninelli type interpolation, that the replica formula yields an upper bound to the exact mutual information. Secondly, for many relevant practical cases, we present a converse lower bound via a method that uses spatial coupling, state evolution analysis and the I-MMSE theorem. This ...
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...
35 pages, 3 figuresInternational audienceGeneralized linear models (GLMs) are used in high-dimension...
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...
Abstract—We consider the estimation of an i.i.d. random vector observed through a linear transform f...
There has been definite progress recently in proving the variational single-letter formula given by ...
Abstract—We study the compressed sensing reconstruction problem for a broad class of random, band-di...
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 is a problem with many applications in machine learning and statistics...
Abstract — In the early years of information theory, mutual information was defined as a random vari...
We consider a class of approximated message passing (AMP) algorithms and characterize their high-dim...
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...
35 pages, 3 figuresInternational audienceGeneralized linear models (GLMs) are used in high-dimension...
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...
Abstract—We consider the estimation of an i.i.d. random vector observed through a linear transform f...
There has been definite progress recently in proving the variational single-letter formula given by ...
Abstract—We study the compressed sensing reconstruction problem for a broad class of random, band-di...
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 is a problem with many applications in machine learning and statistics...
Abstract — In the early years of information theory, mutual information was defined as a random vari...
We consider a class of approximated message passing (AMP) algorithms and characterize their high-dim...
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...
35 pages, 3 figuresInternational audienceGeneralized linear models (GLMs) are used in high-dimension...