MO2.R1.3

Linear Operator Approximate Message Passing: Power Method with Partial and Stochastic Updates

Riccardo Rossetti, Duke University, United States; Bobak Nazer, Boston University, United States; Galen Reeves, Duke University, United States

Session:
Student Paper Award 2

Track:
21: Other topics

Location:
Ballroom II & III

Presentation Time:
Mon, 8 Jul, 12:30 - 12:50

Session Chair:
Meir Feder, Tel-Aviv University
Abstract
This paper introduces a framework for approximate message passing (AMP) in dynamic settings where the data at each iteration is passed through a linear operator. This framework is motivated in part by applications in large-scale, distributed computing where only a subset of the data is available at each iteration. An autoregressive memory term is used to mitigate information loss across iterations and a specialized algorithm, called projection AMP, is designed for the case where each linear operator is an orthogonal projection. Precise theoretical guarantees are provided for a class of Gaussian matrices and non-separable denoising functions. Specifically, it is shown that the iterates can be well-approximated in the high-dimensional limit by a Gaussian process whose second-order statistics are defined recursively via state evolution. These results are applied to the problem of estimating a rank-one spike corrupted by additive Gaussian noise using partial row updates, and the theory is validated by numerical simulations.
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