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Extractors and Lower Bounds for Locally Samplable Sources

机译:本地可简化源的提取器和下界

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摘要

We consider the problem of extracting randomness from sou rces that are efficiently samplable, in the sense that each output bit of the sampler only depends on some small number d of the random input bits. As our main result, we construct a deterministic extractor that, given any d-local source with min-entropy k on n bits, extracts Ω(k~2d) bits that are 2~(-n~(Ω(1))) -close to uniform, provided d ≤ o(log n) and k ≥ n~(2/3+γ) (for arbitrarily small constants γ > 0). Using our result, we also improve a result of Viola (FOCS 2010), who proved a 1/2 - O(1/ log n) statistical distance lower bound for o(log n)-local samplers trying to sample input output pairs of an explicit boolean function, assuming the samplers use at most n + n~(1-δ) random bits for some constant δ > 0. Using a different function, we simultaneously improve the lower bound to 1/2 - 2~(-n~(Ω(1))) and eliminate the restriction on the number of random bits.
机译:从采样器的每个输出位仅取决于少量随机输入位d的意义上来说,我们考虑从可有效简化的源中提取随机性的问题。作为我们的主要结果,我们构造了一个确定性提取器,给定在n位上具有最小熵k的任何d局部源,提取2〜(-n〜(Ω(1))个Ω(k〜2 / nd)位))-接近均匀,条件是d≤o(log n)且k≥n〜(2/3 +γ)(对于任意小的常数γ> 0)。使用我们的结果,我们还改进了Viola(FOCS 2010)的结果,该结果证明了o(log n)个本地采样器尝试对输入输出对进行采样时,其统计距离下限为1/2-O(1 / log n)。一个显式布尔函数,假设采样器最多使用n + n〜(1-δ)个随机位来获取某些恒定δ>0。使用其他函数,我们将下限同时提高到1/2-2〜(-n 〜(Ω(1)))并消除对随机位数的限制。

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