Noisy population recovery in polynomial time

February 24, 2016 ยท The Ethereal ยท ๐Ÿ› IEEE Annual Symposium on Foundations of Computer Science

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Authors Anindya De, Michael Saks, Sijian Tang arXiv ID 1602.07616 Category cs.CC: Computational Complexity Cross-listed cs.DS, cs.LG Citations 18 Venue IEEE Annual Symposium on Foundations of Computer Science Last Checked 1 month ago
Abstract
In the noisy population recovery problem of Dvir et al., the goal is to learn an unknown distribution $f$ on binary strings of length $n$ from noisy samples. For some parameter $ฮผ\in [0,1]$, a noisy sample is generated by flipping each coordinate of a sample from $f$ independently with probability $(1-ฮผ)/2$. We assume an upper bound $k$ on the size of the support of the distribution, and the goal is to estimate the probability of any string to within some given error $\varepsilon$. It is known that the algorithmic complexity and sample complexity of this problem are polynomially related to each other. We show that for $ฮผ> 0$, the sample complexity (and hence the algorithmic complexity) is bounded by a polynomial in $k$, $n$ and $1/\varepsilon$ improving upon the previous best result of $\mathsf{poly}(k^{\log\log k},n,1/\varepsilon)$ due to Lovett and Zhang. Our proof combines ideas from Lovett and Zhang with a \emph{noise attenuated} version of Mรถbius inversion. In turn, the latter crucially uses the construction of \emph{robust local inverse} due to Moitra and Saks.
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