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Optimal mean-based algorithms for trace reconstruction

9 December 2016
Anindya De
Ryan O'Donnell
Rocco A. Servedio
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Abstract

In the (deletion-channel) trace reconstruction problem, there is an unknown nnn-bit source string xxx. An algorithm is given access to independent traces of xxx, where a trace is formed by deleting each bit of~xxx independently with probability~δ\deltaδ. The goal of the algorithm is to recover~xxx exactly (with high probability), while minimizing samples (number of traces) and running time. Previously, the best known algorithm for the trace reconstruction problem was due to Holenstein~et~al.; it uses exp⁡(O~(n1/2))\exp(\tilde{O}(n^{1/2}))exp(O~(n1/2)) samples and running time for any fixed 0<δ<10 < \delta < 10<δ<1. It is also what we call a "mean-based algorithm", meaning that it only uses the empirical means of the individual bits of the traces. Holenstein~et~al.~also gave a lower bound, showing that any mean-based algorithm must use at least nΩ~(log⁡n)n^{\tilde{\Omega}(\log n)}nΩ~(logn) samples. In this paper we improve both of these results, obtaining matching upper and lower bounds for mean-based trace reconstruction. For any constant deletion rate 0<δ<10 < \delta < 10<δ<1, we give a mean-based algorithm that uses exp⁡(O(n1/3))\exp(O(n^{1/3}))exp(O(n1/3)) time and traces; we also prove that any mean-based algorithm must use at least exp⁡(Ω(n1/3))\exp(\Omega(n^{1/3}))exp(Ω(n1/3)) traces. In fact, we obtain matching upper and lower bounds even for δ\deltaδ subconstant and ρ:=1−δ\rho := 1-\deltaρ:=1−δ subconstant: when (log⁡3n)/n≪δ≤1/2(\log^3 n)/n \ll \delta \leq 1/2(log3n)/n≪δ≤1/2 the bound is exp⁡(−Θ(δn)1/3)\exp(-\Theta(\delta n)^{1/3})exp(−Θ(δn)1/3), and when 1/n≪ρ≤1/21/\sqrt{n} \ll \rho \leq 1/21/n​≪ρ≤1/2 the bound is exp⁡(−Θ(n/ρ)1/3)\exp(-\Theta(n/\rho)^{1/3})exp(−Θ(n/ρ)1/3). Our proofs involve estimates for the maxima of Littlewood polynomials on complex disks. We show that these techniques can also be used to perform trace reconstruction with random insertions and bit-flips in addition to deletions. We also find a surprising result: for deletion probabilities δ>1/2\delta > 1/2δ>1/2, the presence of insertions can actually help with trace reconstruction.

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