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Inferring Sparsity: Compressed Sensing using Generalized Restricted Boltzmann Machines

13 June 2016
Eric W. Tramel
Andre Manoel
F. Caltagirone
Marylou Gabrié
Florent Krzakala
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Abstract

In this work, we consider compressed sensing reconstruction from MMM measurements of KKK-sparse structured signals which do not possess a writable correlation model. Assuming that a generative statistical model, such as a Boltzmann machine, can be trained in an unsupervised manner on example signals, we demonstrate how this signal model can be used within a Bayesian framework of signal reconstruction. By deriving a message-passing inference for general distribution restricted Boltzmann machines, we are able to integrate these inferred signal models into approximate message passing for compressed sensing reconstruction. Finally, we show for the MNIST dataset that this approach can be very effective, even for M<KM < KM<K.

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