Quantum versus classical learnability

R. Servedio, S. Gortler
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引用次数: 30

Abstract

Motivated by work on quantum black-box query complexity, we consider quantum versions of two well-studied models of learning Boolean functions: Angluin's (1988) model of exact learning from membership queries and Valiant's (1984) Probably Approximately Correct (PAC) model of learning from random examples. For each of these two learning models we establish a polynomial relationship between the number of quantum versus classical queries required for learning. Our results provide an interesting contrast to known results which show that testing black-box functions for various properties can require exponentially more classical queries than quantum queries. We also show that under a widely held computational hardness assumption there is a class of Boolean functions which is polynomial-time learnable in the quantum version but not the classical version of each learning model; thus while quantum and classical learning are equally powerful from an information theory perspective, they are different when viewed from a computational complexity perspective.
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量子与经典易学性
受量子黑箱查询复杂性研究的启发,我们考虑了两个已经得到充分研究的布尔函数学习模型的量子版本:Angluin(1988)从成员查询中精确学习的模型和Valiant(1984)从随机示例中学习的大概近似正确(PAC)模型。对于这两种学习模型中的每一种,我们在学习所需的量子查询数量与经典查询数量之间建立了多项式关系。我们的结果提供了一个有趣的对比,已知的结果表明,测试各种属性的黑盒函数可能需要比量子查询更多的经典查询。我们还证明了在一个被广泛接受的计算硬度假设下,存在一类布尔函数,它在量子版本中是多项式时间可学习的,但在每个学习模型的经典版本中不是;因此,虽然从信息论的角度来看,量子学习和经典学习同样强大,但从计算复杂性的角度来看,它们是不同的。
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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