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Tuning-free one-bit covariance estimation using data-driven dithering

IEEE Transactions on Information Theory (IEEE Trans. Inf. Theory), 2023
Abstract

We consider covariance estimation of any subgaussian distribution from finitely many i.i.d. samples that are quantized to one bit of information per entry. Recent work has shown that a reliable estimator can be constructed if uniformly distributed dithers on [λ,λ][-\lambda,\lambda] are used in the one-bit quantizer. This estimator enjoys near-minimax optimal, non-asymptotic error estimates in the operator and Frobenius norms if λ\lambda is chosen proportional to the largest variance of the distribution. However, this quantity is not known a-priori, and in practice λ\lambda needs to be carefully tuned to achieve good performance. In this work we resolve this problem by introducing a tuning-free variant of this estimator, which replaces λ\lambda by a data-driven quantity. We prove that this estimator satisfies the same non-asymptotic error estimates - up to small (logarithmic) losses and a slightly worse probability estimate. Our proof relies on a new version of the Burkholder-Rosenthal inequalities for matrix martingales, which is expected to be of independent interest.

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