Spiked Covariance Estimation from Modulo-Reduced Measurements
Elad Romanov, Or Ordentlich

TL;DR
This paper introduces an algorithm for high-dimensional spike direction recovery from modulo-reduced measurements, achieving near-optimal accuracy with polynomial measurements and minimal modulo range, advancing analog-to-digital conversion techniques.
Contribution
The paper presents a novel algorithm for estimating a spike direction from modulo measurements in high dimensions, with theoretical guarantees close to the information-theoretic limit.
Findings
Algorithm accurately estimates the spike direction with polynomial measurements.
Performance remains robust even in non-asymptotic regimes.
Achieves recovery at the smallest possible modulo range for information-theoretic recovery.
Abstract
Consider the rank-1 spiked model: , where is the spike intensity, is an unknown direction and . Motivated by recent advances in analog-to-digital conversion, we study the problem of recovering from i.i.d. modulo-reduced measurements , focusing on the high-dimensional regime (). We develop and analyze an algorithm that, for most directions and , estimates to high accuracy using measurements, provided that . Up to constants, our algorithm accurately estimates at the smallest possible that allows (in an information-theoretic sense) to recover from . A key step in our…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Blind Source Separation Techniques · Random lasers and scattering media
