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Extractina Randomness: A Survey and New Constructions

机译:抽提随机性:调查和新结构

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Extractors are Boolean functions that allow, in some precise sense, extraction of randomness from somewhat random distributions, using only a small amount of truly random bits. Extractors, and the closely related "dispersers," exhibit some of the most “random - like” properties of explicitly constructed combinatorial structures. In this paper we do two things. First, we survey extractors and dispersers: what they are, how they can be designed, and some of their applications. The work described in the survey is due to a long list of research papers by various authors-most notably by David Zuckerman. Then, we present a new tool for constructing explicit extractors and give two new constructions that greatly improve upon previous results. The new tool we devise, a "merger," is a function that accepts d strings, one of which is uniformly distributed and outputs a single string that is guaranteed to be uniformly distributed. We show how to build good explicit mergers, and how mergers can be used to build better extractors. Using this, we present two new constructions. The first construction succeeds in extracting all of the randomness from any somewhat random source. This improves upon previous extractors that extract only some of the randomness from somewhat random sources with "enough" randomness. The amount of truly random bits used by this extractor, however, is not optimal. The second extractor we build extracts only some of the randomness and works only for sources with enough randomness, but uses a near- optimal amount of truly random bits. Extractors and dispersers have many applications in "removing randomness" in various settings and in making randomized constructions explicit. We survey some of these applications and note whenever our new constructions yield better results, e.g., plugging our new extractors into a previous construction we achieve the first explicit N-superconcentrators of linear size and polyloglog (N) depth.
机译:提取器是布尔函数,从某种精确的意义上讲,它仅使用少量真正的随机位就可以从某种随机分布中提取随机性。抽取器以及与之密切相关的“分散器”显示了明确构造的组合结构的某些最“类似于随机”的特性。在本文中,我们做两件事。首先,我们对萃取器和分散器进行了调查:它们是什么,如何设计以及它们的一些应用。调查中描述的工作归功于众多作者的大量研究论文,其中最引人注目的是David Zuckerman。然后,我们提出了一种用于构造显式提取器的新工具,并给出了两个大大改进了先前结果的新构造。我们设计的新工具“合并”是一个接受d个字符串的函数,其中d个字符串是均匀分布的,并输出一个保证均匀分布的字符串。我们展示了如何建立良好的显式合并,以及如何使用合并来构建更好的提取程序。使用此,我们提出了两个新的构造。第一种构造成功地从任何某种随机源中提取了所有随机性。这对以前的提取器进行了改进,以前的提取器从具有“足够”的随机性的某种随机源中仅提取一些随机性。然而,该提取器使用的真正随机比特的数量不是最佳的。我们构建的第二个提取器仅提取一些随机性,并且仅适用于具有足够随机性的源,但是使用接近最佳数量的真正随机位。提取器和分散器在各种环境下的“消除随机性”以及使随机化的结构明确化方面具有许多应用。我们对其中一些应用进行了调查,并注意到每当我们的新构造产生更好的结果时,例如,将我们的新提取器插入先前的构造中,我们就获得了第一个显式的线性和N深度的N超浓缩器。

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