多玩家通信的强欺骗集及其在流统计的确定性估计中的应用

Amit Chakrabarti, S. Kale
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引用次数: 10

摘要

我们开发了一个研究多人确定性通信的范例,基于一个新的组合概念,我们称之为强愚弄集。我们的范例导致了解决私有消息设置中多玩家平等问题所需的每个玩家通信的最佳下限。这反过来又在私有消息和单向黑板通信复杂性之间提供了非常强的分离(0 (1)vs Ω(n))。应用我们的通信复杂性结果,我们表明,对于确定性数据流算法,即使对输入流的一些基本统计数据进行松散估计也需要大量的空间。例如,在因子α内近似频率矩Fk需要为k >提供Ω(n/α1/(1-k))空间,为k >提供Ω(n/αk/(k-1))空间。特别地,在任何常数因子α内的近似,无论多大,都需要线性空间,除了k = 1的平凡例外。这与随机流算法的情况形成鲜明对比,随机流算法对k≤2使用Õ(1)空间,对所有有限k和所有常数ε >使用o(n)空间,可以将Fk近似到(1±ε)因子内。以往确定性估计的线性空间下界仅限于小因子α,如α <;2表示近似F0或F2。我们还在确定性设置中为估计流的经验熵以及最大匹配的大小和流图的边缘连通性的问题提供了一定的空间/近似权衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Strong Fooling Sets for Multi-player Communication with Applications to Deterministic Estimation of Stream Statistics
We develop a paradigm for studying multi-player deterministic communication, based on a novel combinatorial concept that we call a strong fooling set. Our paradigm leads to optimal lower bounds on the per-player communication required for solving multi-player EQUALITY problems in a private-message setting. This in turn gives a very strong - O(1) versus Ω(n) - separation between private-message and one-way blackboard communication complexities. Applying our communication complexity results, we show that for deterministic data streaming algorithms, even loose estimations of some basic statistics of an input stream require large amounts of space. For instance, approximating the frequency moment Fk within a factor α requires Ω(n/α1/(1-k)) space for k > 1 and roughly Ω(n/αk/(k-1)) space for k > 1. In particular, approximation within any constant factor α, however large, requires linear space, with the trivial exception of k = 1. This is in sharp contrast to the situation for randomized streaming algorithms, which can approximate Fk to within (1±ε) factors using Õ(1) space for k ≤ 2 and o(n) space for all finite k and all constant ε > 0. Previous linear-space lower bounds for deterministic estimation were limited to small factors α, such as α <; 2 for approximating F0 or F2. We also provide certain space/approximation tradeoffs in a deterministic setting for the problems of estimating the empirical entropy of a stream as well as the size of the maximum matching and the edge connectivity of a streamed graph.
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