Gap Hamming的多轮通信下界及其若干结果

Joshua Brody, Amit Chakrabarti
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引用次数: 38

摘要

Gap-Hamming-Distance问题是在证明数据流模型中一些关键问题的空间下界的背景下产生的。在这个问题中,Alice和Bob必须决定他们的$n$ -bit输入字符串之间的汉明距离是大(即至少$n/2 + \sqrt n$)还是小(即最多$n/2 - \sqrt n$);他们不在乎它是大还是小。问题规范中的$\Theta(\sqrt n)$差距对于捕获数据流算法所允许的近似值至关重要。到目前为止,对于随机通信,这个问题的$\Omega(n)$下界仅在单向设置中已知。我们证明了使用任意常数轮数的随机化协议的$\Omega(n)$下界。因此,我们得出结论,例如,$\epsilon$ -近似计算数据流中不同元素的数量需要$\Omega(1/\epsilon^2)$空间,即使在输入流上有多个(恒定数量)传递。这扩展了之前的一次通过下限,回答了一个长期存在的开放性问题。对于近似频率矩和近似数据流的经验熵,我们得到了类似的结果。在此过程中,我们还得到了问题的单向确定性通信复杂度的紧$n - \Theta(\sqrt{n}\log n)$下界和上界。最后,我们给出了单向随机通信复杂度$\Omega(n)$下界的简单组合证明。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Multi-Round Communication Lower Bound for Gap Hamming and Some Consequences
The Gap-Hamming-Distance problem arose in the context of proving space lower bounds for a number of key problems in the data stream model. In this problem, Alice and Bob have to decide whether the Hamming distance between their $n$-bit input strings is large (i.e., at least $n/2 + \sqrt n$) or small (i.e., at most $n/2 - \sqrt n$); they do not care if it is neither large nor small. This $\Theta(\sqrt n)$ gap in the problem specification is crucial for capturing the approximation allowed to a data stream algorithm. Thus far, for randomized communication, an $\Omega(n)$ lower bound on this problem was known only in the one-way setting. We prove an $\Omega(n)$ lower bound for randomized protocols that use any constant number of rounds. As a consequence we conclude, for instance, that $\epsilon$-approximately counting the number of distinct elements in a data stream requires $\Omega(1/\epsilon^2)$ space, even with multiple (a constant number of) passes over the input stream. This extends earlier one-pass lower bounds, answering a long-standing open question. We obtain similar results for approximating the frequency moments and for approximating the empirical entropy of a data stream. In the process, we also obtain tight $n - \Theta(\sqrt{n}\log n)$ lower and upper bounds on the one-way deterministic communication complexity of the problem. Finally, we give a simple combinatorial proof of an $\Omega(n)$ lower bound on the one-way randomized communication complexity.
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