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Learning Entangled Single-Sample Gaussians in the Subset-of-Signals Model

Abstract

In the setting of entangled single-sample distributions, the goal is to estimate some common parameter shared by a family of nn distributions, given one single sample from each distribution. This paper studies mean estimation for entangled single-sample Gaussians that have a common mean but different unknown variances. We propose the subset-of-signals model where an unknown subset of mm variances are bounded by 1 while there are no assumptions on the other variances. In this model, we analyze a simple and natural method based on iteratively averaging the truncated samples, and show that the method achieves error O(nlnnm)O \left(\frac{\sqrt{n\ln n}}{m}\right) with high probability when m=Ω(nlnn)m=\Omega(\sqrt{n\ln n}), matching existing bounds for this range of mm. We further prove lower bounds, showing that the error is Ω((nm4)1/2)\Omega\left(\left(\frac{n}{m^4}\right)^{1/2}\right) when mm is between Ω(lnn)\Omega(\ln n) and O(n1/4)O(n^{1/4}), and the error is Ω((nm4)1/6)\Omega\left(\left(\frac{n}{m^4}\right)^{1/6}\right) when mm is between Ω(n1/4)\Omega(n^{1/4}) and O(n1ϵ)O(n^{1 - \epsilon}) for an arbitrarily small ϵ>0\epsilon>0, improving existing lower bounds and extending to a wider range of mm.

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