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Quantum Algorithms for Learning Symmetric Juntas via Adversary Bound

机译:通过对抗束缚学习对称君主的量子算法

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In this paper, we study the following variant of the junta learning problem. We are given oracle access to a Boolean function f on n variables that only depends on k variables, and, when restricted to them, equals some predefined function h. The task is to identify the variables the function depends on. This is a generalisation of the Bernstein-Vazirani problem (when h is the XOR function) and the combinatorial group testing problem (when h is the OR function). We analyse the general case using the adversary bound, and give an alternative formulation for the quantum query complexity of this problem. We construct optimal quantum query algorithms for the cases when h is the OR function (complexity is square root of k) or the exact-half function (complexity is the fourth power root of k). The first algorithm resolves an open problem from. For the case when h is the majority function, we prove an upper bound of the fourth power root of k. We obtain a quartic improvement when compared to the randomised complexity (if h is the exact-half or the majority function), and a quadratic one when compared to the non-adaptive quantum complexity (for all functions considered in the paper).
机译:在本文中,我们研究了Junta学习问题的以下变种。我们在N个变量上给出了Oracle访问的Boolean函数f,只依赖于K变量,而且当限于它们时,等于一些预定义的函数h。任务是识别函数取决于的变量。这是伯恩斯坦-Vazirani问题的概括(当H是XOR函数时)和组合组测试问题(当H是或功能时)。我们使用对手界定分析一般案例,并为该问题的量子查询复杂性提供替代配方。我们构建最佳量子查询算法,当h是或功能(复杂性为k的平方根)或精确半函数(复杂性是k的第四个电源根)。第一个算法从中解析了开放问题。对于H是多数函数的情况,我们证明了k的第四电源根的上限。与随机复杂度相比,我们获得了四季改进(如果H是精确的一半或多数函数),并且与非自适应量子复杂度相比(对于纸中所考虑的所有功能)相比,则是二次二次的。

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