Exponential separation of communication and external information

Anat Ganor, Gillat Kol, R. Raz
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引用次数: 31

Abstract

We show an exponential gap between communication complexity and external information complexity, by analyzing a communication task suggested as a candidate by Braverman. Previously, only a separation of communication complexity and internal information complexity was known. More precisely, we obtain an explicit example of a search problem with external information complexity ≤ O(k), with respect to any input distribution, and distributional communication complexity ≥ 2k, with respect to some input distribution. In particular, this shows that a communication protocol cannot always be compressed to its external information. By a result of Braverman, our gap is the largest possible. Moreover, since the upper bound of O(k) on the external information complexity of the problem is obtained with respect to any input distribution, our result implies an exponential gap between communication complexity and information complexity (both internal and external) in the non-distributional setting of Braverman. In this setting, no gap was previously known, even for internal information complexity.
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沟通与外部信息呈指数级分离
通过分析Braverman提出的候选通信任务,我们展示了通信复杂性和外部信息复杂性之间的指数差距。以前,人们只知道通信复杂性和内部信息复杂性的分离。更准确地说,我们得到了一个搜索问题的显式例子,对于任何输入分布,外部信息复杂度≤O(k),对于某些输入分布,分布通信复杂度≥2k。特别是,这表明通信协议不能总是被压缩到它的外部信息。根据布雷弗曼的调查结果,我们的差距是最大的。此外,由于问题的外部信息复杂度O(k)的上界是关于任何输入分布的,我们的结果意味着在Braverman的非分布设置中,通信复杂度和信息复杂度(包括内部和外部)之间存在指数差距。在这种情况下,即使在内部信息复杂性方面,以前也不知道存在差距。
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Exponential separation of communication and external information Proceedings of the forty-eighth annual ACM symposium on Theory of Computing Explicit two-source extractors and resilient functions Constant-rate coding for multiparty interactive communication is impossible Approximating connectivity domination in weighted bounded-genus graphs
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