Separations in query complexity based on pointer functions

A. Ambainis, K. Balodis, Aleksandrs Belovs, Troy Lee, M. Santha, Juris Smotrovs
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引用次数: 63

Abstract

In 1986, Saks and Wigderson conjectured that the largest separation between deterministic and zero-error randomized query complexity for a total boolean function is given by the function f on n=2k bits defined by a complete binary tree of NAND gates of depth k, which achieves R0(f) = O(D(f)0.7537…). We show this is false by giving an example of a total boolean function f on n bits whose deterministic query complexity is Ω(n/log(n)) while its zero-error randomized query complexity is Õ(√n). We further show that the quantum query complexity of the same function is Õ(n1/4), giving the first example of a total function with a super-quadratic gap between its quantum and deterministic query complexities. We also construct a total boolean function g on n variables that has zero-error randomized query complexity Ω(n/log(n)) and bounded-error randomized query complexity R(g) = Õ(√n). This is the first super-linear separation between these two complexity measures. The exact quantum query complexity of the same function is QE(g) = Õ(√n). These functions show that the relations D(f) = O(R1(f)2) and R0(f) = Õ(R(f)2) are optimal, up to poly-logarithmic factors. Further variations of these functions give additional separations between other query complexity measures: a cubic separation between Q and R0, a 3/2-power separation between QE and R, and a 4th power separation between approximate degree and bounded-error randomized query complexity. All of these examples are variants of a function recently introduced by Goos, Pitassi, and Watson which they used to separate the unambiguous 1-certificate complexity from deterministic query complexity and to resolve the famous Clique versus Independent Set problem in communication complexity.
基于指针函数的查询复杂度分隔
1986年,Saks和Wigderson推测,对于一个全布尔函数,确定性和零错误随机查询复杂度之间的最大分离是由深度为k的NAND门的完全二叉树定义的n=2k位上的函数f给出的,它实现了R0(f) = O(D(f)0.7537…)。我们通过给出一个总布尔函数f在n位上的例子来证明这是错误的,该函数的确定性查询复杂度为Ω(n/log(n)),而其零错误随机查询复杂度为Õ(√n)。我们进一步证明了同一函数的量子查询复杂度为Õ(n1/4),给出了在其量子查询复杂度和确定性查询复杂度之间具有超二次差距的总函数的第一个示例。我们还在n个变量上构造了一个总布尔函数g,它具有零错误随机查询复杂度Ω(n/log(n))和有限错误随机查询复杂度R(g) = Õ(√n)。这是这两种复杂性度量之间的首次超线性分离。相同函数的精确量子查询复杂度为QE(g) = Õ(√n)。这些函数表明,关系D(f) = O(R1(f)2)和R0(f) = Õ(R(f)2)是最优的,直到多对数因子。这些函数的进一步变化在其他查询复杂度度量之间提供了额外的分离:Q和R0之间的三次分离,QE和R之间的3/2次分离,以及近似度和有界误差随机查询复杂度之间的四次分离。所有这些例子都是Goos、Pitassi和Watson最近引入的一个函数的变体,他们使用该函数将明确的1-证书复杂性与确定性查询复杂性分离开来,并解决通信复杂性中著名的Clique与Independent Set问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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