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Random linear estimation with rotationally-invariant designs: Asymptotics at high temperature (2212.10624v1)

Published 20 Dec 2022 in cs.IT, math-ph, math.IT, and math.MP

Abstract: We study estimation in the linear model $y=A\beta\star+\epsilon$, in a Bayesian setting where $\beta\star$ has an entrywise i.i.d. prior and the design $A$ is rotationally-invariant in law. In the large system limit as dimension and sample size increase proportionally, a set of related conjectures have been postulated for the asymptotic mutual information, Bayes-optimal mean squared error, and TAP mean-field equations that characterize the Bayes posterior mean of $\beta\star$. In this work, we prove these conjectures for a general class of signal priors and for arbitrary rotationally-invariant designs $A$, under a "high-temperature" condition that restricts the range of eigenvalues of $A\top A$. Our proof uses a conditional second-moment method argument, where we condition on the iterates of a version of the Vector AMP algorithm for solving the TAP mean-field equations.

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