Unbalanced Expanders and Randomness Extractors from Parvaresh-Vardy Codes

V. Guruswami, C. Umans, Salil P. Vadhan
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引用次数: 423

Abstract

We give an improved explicit construction of highly unbalanced bipartite expander graphs with expansion arbitrarily close to the degree (which is polylogarithmic in the number of vertices). Both the degree and the number of right-hand vertices are polynomially close to optimal, whereas the previous constructions of Ta-Shma, Umans, and Zuckerman (STOC "01) required at least one of these to be quasipolynomial in the optimal. Our expanders have a short and self-contained description and analysis, based on the ideas underlying the recent list-decodable error-correcting codes of Parvaresh and Vardy (FOCS "05). Our expanders can be interpreted as near-optimal "randomness condensers," that reduce the task of extracting randomness from sources of arbitrary min-entropy rate to extracting randomness from sources of min-entropy rate arbitrarily close to 1, which is a much easier task. Using this connection, we obtain a new construction of randomness extractors that is optimal up to constant factors, while being much simpler than the previous construction of Lu et al. (STOC "03) and improving upon it when the error parameter is small (e.g. 1/poly(n)).
Parvaresh-Vardy码的不平衡扩展器和随机提取器
我们给出了一种改进的高度不平衡二部展开图的显式构造,其展开任意接近于度(顶点数为多对数)。右手顶点的度和数量都多项式地接近最优,而之前的Ta-Shma、humans和Zuckerman (STOC "01)的构造要求其中至少有一个是最优的拟多项式。我们的扩展器有一个简短且独立的描述和分析,基于Parvaresh和Vardy最近的列表可解码纠错代码(FOCS "05)的基本思想。我们的扩展器可以被解释为近乎最优的“随机压缩器”,它将从任意最小熵率源提取随机性的任务减少到从任意接近1的最小熵率源提取随机性的任务,这是一个更容易的任务。利用这种联系,我们获得了一种新的随机提取器结构,该结构在常量因素下是最优的,同时比Lu等人(STOC "03)之前的结构简单得多,并且在误差参数很小(例如1/poly(n))时对其进行了改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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