Title
Exact asymptotics for phase retrieval and compressed sensing with random generative priors
Abstract
We consider the problem of compressed sensing and of (real-valued) phase retrieval with random measurement matrix. We derive sharp asymptotics for the information-theoretically optimal performance and for the best known polynomial algorithm for an ensemble of generative priors consisting of fully connected deep neural networks with random weight matrices and arbitrary activations. We compare the performance to sparse separable priors and conclude that generative priors might be advantageous in terms of algorithmic performance. In particular, while sparsity does not allow to perform compressive phase retrieval efficiently close to its information-theoretic limit, it is found that under the random generative prior compressed phase retrieval becomes tractable.
Year
Venue
DocType
2020
MSML
Conference
Citations 
PageRank 
References 
0
0.34
0
Authors
5
Name
Order
Citations
PageRank
Aubin, Benjamin122.06
Bruno Loureiro201.69
Baker Antoine300.34
Florent Krzakala497767.30
Lenka Zdeborová5119078.62