增强和硬核设置

Adam R. Klivans, R. Servedio
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引用次数: 51

摘要

本文结合了理论计算机科学的两个基本思想——核心集构造,一种来自计算复杂性的硬度放大,和一种来自计算学习理论的提升技术。利用这种联系,我们将复杂性理论技术有效地应用于学习理论,反之亦然。我们证明了R. Impagliazzo(1995)的核心集构造,它建立了布尔函数高度不可逼近的分布的存在性,可以被视为一种增强算法。使用替代的增强方法,我们给出了一个改进的硬核集构造界,它与已知的增强下界相匹配,因此在这类技术中是最优的。然后,我们展示了如何应用R. Impagliazzo的技术来给出Jackson著名的Harmonic Sieve算法的新版本,该算法用于使用隶属度查询在均匀分布下学习DNF公式。我们的新版本在运行时间上有显著的渐进改进。对我们的论点至关重要的是仔细分析用于增强集和硬核集构造的分布。
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Boosting and hard-core sets
This paper connects two fundamental ideas from theoretical computer science hard-core set construction, a type of hardness amplification from computational complexity, and boosting, a technique from computational learning theory. Using this connection we give fruitful applications of complexity-theoretic techniques to learning theory and vice versa. We show that the hard-core set construction of R. Impagliazzo (1995), which establishes the existence of distributions under which boolean functions are highly inapproximable, may be viewed as a boosting algorithm. Using alternate boosting methods we give an improved bound for hard-core set construction which matches known lower bounds from boosting and thus is optimal within this class of techniques. We then show how to apply techniques from R. Impagliazzo to give a new version of Jackson's celebrated Harmonic Sieve algorithm for learning DNF formulae under the uniform distribution using membership queries. Our new version has a significant asymptotic improvement in running time. Critical to our arguments is a careful analysis of the distributions which are employed in both boosting and hard-core set constructions.
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