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引用次数: 4
摘要
非信令策略是具有一定非局部相关性的分布的集合。它们在物理学中被研究作为量子策略的严格推广,以理解自然的明显非定域性的力量和局限性。最近,由于与复杂性和密码学的联系,它们在理论计算机科学中受到了关注。我们开始研究针对非信号策略的性能测试,首先关注线性测试的经典问题(Blum, Luby, and Rubinfeld;JCSS 1993)。我们证明了任何高概率通过线性检验的非信号策略必须接近于线性函数上的拟分布。准分布通过允许负概率将概率分布的概念推广到全局对象(如函数)上,同时要求“局部视图”遵循标准分布(具有非负概率)。准分布作为描述各种非局域现象的工具,在量子力学研究中自然出现。我们对线性测试的分析依赖于应用于拟分布的傅立叶分析技术。在此过程中,我们还建立了非信号策略和准分布之间的一般等价关系,我们相信这将为线性测试之外的非信号策略的属性测试研究提供有用的视角。
Testing Linearity against Non-signaling Strategies
Non-signaling strategies are collections of distributions with certain non-local correlations. They have been studied in physics as a strict generalization of quantum strategies to understand the power and limitations of nature’s apparent non-locality. Recently, they have received attention in theoretical computer science due to connections to Complexity and Cryptography. We initiate the study of Property Testing against non-signaling strategies, focusing first on the classical problem of linearity testing (Blum, Luby, and Rubinfeld; JCSS 1993). We prove that any non-signaling strategy that passes the linearity test with high probability must be close to a quasi-distribution over linear functions. Quasi-distributions generalize the notion of probability distributions over global objects (such as functions) by allowing negative probabilities, while at the same time requiring that “local views” follow standard distributions (with non-negative probabilities). Quasi-distributions arise naturally in the study of quantum mechanics as a tool to describe various non-local phenomena. Our analysis of the linearity test relies on Fourier analytic techniques applied to quasi-distributions. Along the way, we also establish general equivalences between non-signaling strategies and quasi-distributions, which we believe will provide a useful perspective on the study of Property Testing against non-signaling strategies beyond linearity testing.