Self-Averaging Expectation Propagation

August 23, 2016 Β· Declared Dead Β· πŸ› Neural Information Processing Systems

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Authors Burak Γ‡akmak, Manfred Opper, Bernard H. Fleury, Ole Winther arXiv ID 1608.06602 Category cs.IT: Information Theory Cross-listed cs.LG Citations 9 Venue Neural Information Processing Systems Last Checked 4 months ago
Abstract
We investigate the problem of approximate Bayesian inference for a general class of observation models by means of the expectation propagation (EP) framework for large systems under some statistical assumptions. Our approach tries to overcome the numerical bottleneck of EP caused by the inversion of large matrices. Assuming that the measurement matrices are realizations of specific types of ensembles we use the concept of freeness from random matrix theory to show that the EP cavity variances exhibit an asymptotic self-averaging property. They can be pre-computed using specific generating functions, i.e. the R- and/or S-transforms in free probability, which do not require matrix inversions. Our approach extends the framework of (generalized) approximate message passing -- assumes zero-mean iid entries of the measurement matrix -- to a general class of random matrix ensembles. The generalization is via a simple formulation of the R- and/or S-transforms of the limiting eigenvalue distribution of the Gramian of the measurement matrix. We demonstrate the performance of our approach on a signal recovery problem of nonlinear compressed sensing and compare it with that of EP.
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