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All-or-Nothing Phenomena: From Single-Letter to High Dimensions

Abstract

We consider the linear regression problem of estimating a pp-dimensional vector β\beta from nn observations Y=Xβ+WY = X \beta + W, where βji.i.d.π\beta_j \stackrel{\text{i.i.d.}}{\sim} \pi for a real-valued distribution π\pi with zero mean and unit variance, Xiji.i.d.N(0,1)X_{ij} \stackrel{\text{i.i.d.}}{\sim} \mathcal{N}(0,1), and Wii.i.d.N(0,σ2)W_i\stackrel{\text{i.i.d.}}{\sim} \mathcal{N}(0, \sigma^2). In the asymptotic regime where n/pδn/p \to \delta and p/σ2snr p/ \sigma^2 \to \mathsf{snr} for two fixed constants δ,snr(0,)\delta, \mathsf{snr}\in (0, \infty) as pp \to \infty, the limiting (normalized) minimum mean-squared error (MMSE) has been characterized by the MMSE of an associated single-letter (additive Gaussian scalar) channel. In this paper, we show that if the MMSE function of the single-letter channel converges to a step function, then the limiting MMSE of estimating β\beta in the linear regression problem converges to a step function which jumps from 11 to 00 at a critical threshold. Moreover, we establish that the limiting mean-squared error of the (MSE-optimal) approximate message passing algorithm also converges to a step function with a larger threshold, providing evidence for the presence of a computational-statistical gap between the two thresholds.

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