An optimal separation of randomized and Quantum query complexity

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Abstract

We prove that for every decision tree, the absolute values of the Fourier coefficients of given order t?1 sum to at most (cd/t)t/2(1+logn)(t-1)/2, where n is the number of variables, d is the tree depth, and c>0 is an absolute constant. This bound is essentially tight and settles a conjecture due to Tal (arxiv 2019; FOCS 2020). The bounds prior to our work degraded rapidly with t, becoming trivial already at t=?d. As an application, we obtain, for every integer k?1, a partial Boolean function on n bits that has bounded-error quantum query complexity at most k/2 and randomized query complexity ?(n1-1/k). This separation of bounded-error quantum versus randomized query complexity is best possible, by the results of Aaronson and Ambainis (STOC 2015). Prior to our work, the best known separation was polynomially weaker: O(1) versus ?(n2/3-?) for any ?>0 (Tal, FOCS 2020). As another application, we obtain an essentially optimal separation of O(logn) versus ?(n1-?) for bounded-error quantum versus randomized communication complexity, for any ?>0. The best previous separation was polynomially weaker: O(logn) versus ?(n2/3-?) (implicit in Tal, FOCS 2020).

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APA

Sherstov, A. A., Storozhenko, A. A., & Wu, P. (2021). An optimal separation of randomized and Quantum query complexity. In Proceedings of the Annual ACM Symposium on Theory of Computing (pp. 1289–1302). Association for Computing Machinery. https://doi.org/10.1145/3406325.3451019

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