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A concentration inequality for the overlap of a vector on a large set, with application to the communication complexity of the Gap-Hamming-Distance problem

机译:向量在大集合上重叠的集中不等式,适用于间隙-汉明距离问题的通信复杂性

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Given two sets A,B in Rn, a measure of their correlation is given by the expected squared inner product between a random x in A and a random y in B. We prove an inequality showing that no two sets of large enough Gaussian measure (at least e^{-delta n} for some constant delta >0) can have correlation substantially lower than would two random sets of the same size. Our proof is based on a concentration inequality for the overlap of a random Gaussian vector on a large set. As an application, we show how our result can be combined with the partition bound of Jain and Klauck to give a simpler proof of a recent linear lower bound on the randomized communication complexity of the Gap-Hamming-Distance problem due to Chakrabarti and Regev
机译:给定Rn中的两个A,B集,它们的相关性的度量由A中的随机x和B中的随机y之间的预期平方内积给出。我们证明了一个不等式,表明没有两组足够大的高斯度量(对于一些恒定的δ> 0,至少e 1(-δn)至少可以具有比相同大小的两个随机集合低的相关性。我们的证明是基于大集合上随机高斯向量重叠的浓度不等式。作为一个应用程序,我们展示了如何将我们的结果与and那教派和克劳克的分区界线相结合,以更简单地证明最近的线性下界关于由于查克拉巴蒂和瑞格夫而引起的缺口汉明距离问题的随机通信复杂性

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