Rigorous Dynamics and Consistent Estimation in Arbitrarily Conditioned Linear Systems
Fletcher, Alyson K., Sahraee-Ardakan, Mojtaba, Rangan, Sundeep, Schniter, Philip
–Neural Information Processing Systems
The problem of estimating a random vector x from noisy linear measurements y Ax w with unknown parameters on the distributions of x and w, which must also be learned, arises in a wide range of statistical learning and linear inverse problems. We show that a computationally simple iterative message-passing algorithm can provably obtain asymptotically consistent estimates in a certain high-dimensional large-system limit (LSL) under very general parameterizations. Previous message passing techniques have required i.i.d. The proposed algorithm, called adaptive vector approximate message passing (Adaptive VAMP) with auto-tuning, applies to all right-rotationally random A. Importantly, this class includes matrices with arbitrarily bad conditioning. We show that the parameter estimates and mean squared error (MSE) of x in each iteration converge to deterministic limits that can be precisely predicted by a simple set of state evolution (SE) equations.
Neural Information Processing Systems
Feb-14-2020, 10:43:11 GMT
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