Multi-Source Approximate Message Passing with Random Semi-Unitary Dictionaries
Abstract
Motivated by the recent interest in approximate message passing (AMP) for matrix-valued linear observations with superposition of multiple statistically asymmetric signal sources, we introduce a multi-source AMP framework in which the dictionary matrices associated with each signal source are drawn from a random semi-unitary ensemble (rather than the standard Gaussian matrix ensemble.) While a similar model has been explored by Vehkaper\"a, Kabashima, and Chatterjee (2016) using the replica method, here we present an AMP algorithm and provide a high-dimensional yet finite-sample analysis. As a proof of concept, we show the effectiveness of the proposed approach on the problem of message detection and channel estimation in an unsourced random access scenario in wireless communication.
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