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Dimension, pseudorandomness and extraction of pseudorandomness1

机译:伪和谐的尺寸,伪随机和提取1

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摘要

In this paper we propose a quantification of distributions on a set of strings, in terms of how close to pseudorandom a distribution is. The quantification is an adaptation of the theory of dimension of sets of infinite sequences introduced by Lutz. Adapting Hitchcocku27s work, we also show that the logarithmic loss incurred by a predictor on a distribution is quantitatively equivalent to the notion of dimension we define. Roughly, this captures the equivalence between pseudorandomness defined via indistinguishability and via unpredictability. Later we show some natural properties of our notion of dimension. We also do a comparative study among our proposed notion of dimension and two well known notions of computational analogue of entropy, namely HILL-type pseudo min-entropy and next-bit pseudo Shannon entropy.Further, we apply our quantification to the following problem. If we know that the dimension of a distribution on the set of n-length strings is s in (0,1], can we extract out O(sn) pseudorandom bits out of the distribution? We show that to construct such extractor, one need at least Omega(log n) bits of pure randomness. However, it is still open to do the same using O(log n) random bits. We show that deterministic extraction is possible in a special case - analogous to the bit-fixing sources introduced by Chor et al., which we term nonpseudorandom bit-fixing source. We adapt the techniques of Gabizon, Raz and Shaltiel to construct a deterministic pseudorandom extractor for this source.By the end, we make a little progress towards P vs. BPP problem by showing that existence of optimal stretching function that stretches O(log n) input bits to produce n output bits such that output distribution has dimension s in (0,1], implies P=BPP.
机译:在本文中,我们建议根据字符串与伪随机的接近程度来量化一组字符串上的分布。量化是对Lutz引入的无限序列集的维数理论的一种改编。改编希区柯克的著作,我们还表明,预测变量在分布上引起的对数损失在数量上等于我们定义的维数概念。粗略地讲,这捕获了通过不可区分性和不可预测性定义的伪随机性之间的等价性。稍后,我们展示了尺寸概念的某些自然属性。我们还对建议的维数概念和两个众所周知的熵计算类比概念HILL型伪最小熵和下位伪Shannon熵进行了比较研究。此外,我们将量化应用于以下问题。如果我们知道n个长度的字符串集上的分布的维数为(0,1]中的s,我们可以从分布中提取O(sn)个伪随机位吗?至少需要纯随机性的Omega(log n)位,但是仍然可以使用O(log n)随机位进行处理。我们证明在特定情况下确定性提取是可能的-与位固定类似由Chor等人(称为非伪随机位固定源)引入的信号源,我们采用Gabizon,Raz和Shaltiel的技术为该源构造了确定性的伪随机提取器。 BPP问题通过显示存在最佳扩展函数来进行扩展,该函数可以扩展O(log n)个输入位以生成n个输出位,从而使输出分布的维数s在(0,1]中,这意味着P = BPP。

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