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首页> 外文期刊>JMLR: Workshop and Conference Proceedings >Extending Learnability to Auxiliary-Input Cryptographic Primitives and Meta-PAC Learning
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Extending Learnability to Auxiliary-Input Cryptographic Primitives and Meta-PAC Learning

机译:将可读性扩展到辅助输入加密基元和Meta-PAC学习

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We investigate the meaning of efficient learnability from several different perspectives. The purpose is to give new insights into central problems in computational learning theory (CoLT). Specifically, we discuss the following two questions related to efficient PAC learnability. First, we investigate the gap between PAC learnability for polynomial-size circuits and weak cryptographic primitives taking auxiliary-input. Applebaum et al. observed that such a weak primitive is enough to show the hardness of PAC learning. However, the opposite direction is still unknown. In this paper, we introduce the following two notions: (1) a variant model of PAC learning whose hardness corresponds to auxiliary-input one-way functions; (2) a variant of a hitting set generator corresponding to the hardness of PAC learning. The equivalence gives a clearer insight into the gap between the hardness of learning and weak cryptographic primitives. Second, we discuss why proving efficient learnability is difficult. This question is natural because few classes are known to be polynomially learnable at present. In this paper, we formulate a task of determining efficient learnability as a meta-PAC learning problem and show that our meta-PAC learning is exactly as hard as PAC learning. Our result insists on one possibility: a hard-to-learn instance itself yields the hardness of proving efficient learnability. Our technical contribution is to give (1) a general framework for translating the hardness of PAC learning into auxiliary-input primitives, and (2) a new formulation to discuss the hardness of determining efficient learnability. Our work yields new important frontiers related to CoLT, including investigation of the learning hierarchy.
机译:我们调查了从几个不同的角度来看有效可读性的含义。目的是对计算学习理论(COLT)中的核心问题提供新的见解。具体而言,我们讨论了与有效的PAC可读性有关的以下两个问题。首先,我们研究了采用辅助输入的多项式电路和弱密加密原语之间的PAC学可读性之间的差距。 Applebaum等人。观察到这种弱的原始足以显示PAC学习的硬度。然而,相反的方向仍然是未知的。在本文中,我们介绍了以下两个概念:(1)PAC学习的变体模型,其硬度对应于辅助输入单向功能; (2)对应于PAC学习的硬度的击球设定发生器的变型。等价物可以更清楚地了解学习硬度与弱密加密原语之间的差距。其次,我们讨论了为什么证明有效的学习是困难的。这个问题是自然的,因为众所周知,目前少数课程是多项式学习的。在本文中,我们制定了作为Meta-PAC学习问题确定有效可学学的任务,并表明我们的Meta-PAC学习与PAC学习完全困难。我们的结果坚持一种可能性:难以学习的实例本身产生了证明有效可读性的硬度。我们的技术贡献是提供(1)将PAC学习硬度转化为辅助输入原语的一般框架,(2)新配方,以讨论确定有效可读性的硬度。我们的工作产生了与COLT相关的新重要边界,包括调查学习层次结构。

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