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首页> 外文期刊>LIPIcs : Leibniz International Proceedings in Informatics >What Circuit Classes Can Be Learned with Non-Trivial Savings?
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What Circuit Classes Can Be Learned with Non-Trivial Savings?

机译:使用非优惠性的节省可以学习哪些电路课程?

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Despite decades of intensive research, efficient - or even sub-exponential time - distribution-free PAC learning algorithms are not known for many important Boolean function classes. In this work we suggest a new perspective on these learning problems, inspired by a surge of recent research in complexity theory, in which the goal is to determine whether and how much of a savings over a naive 2^n runtime can be achieved. We establish a range of exploratory results towards this end. In more detail, (1) We first observe that a simple approach building on known uniform-distribution learning results gives non-trivial distribution-free learning algorithms for several well-studied classes including AC0, arbitrary functions of a few linear threshold functions (LTFs), and AC0 augmented with mod_p gates. (2) Next we present an approach, based on the method of random restrictions from circuit complexity, which can be used to obtain several distribution-free learning algorithms that do not appear to be achievable by approach (1) above. The results achieved in this way include learning algorithms with non-trivial savings for LTF-of-AC0 circuits and improved savings for learning parity-of-AC0 circuits. (3) Finally, our third contribution is a generic technique for converting lower bounds proved using Neciporuk's method to learning algorithms with non-trivial savings. This technique, which is the most involved of our three approaches, yields distribution-free learning algorithms for a range of classes where previously even non-trivial uniform-distribution learning algorithms were not known; these classes include full-basis formulas, branching programs, span programs, etc. up to some fixed polynomial size.
机译:尽管进行了数十年的深入研究,但对于许多重要的布尔函数类而言,高效(甚至低于指数时间)的无分布PAC学习算法仍然未知。在这项工作中,我们从复杂性理论的最新研究中激发了对这些学习问题的新观点,其目的是确定是否可以以及仅在朴素的2 ^ n运行时间中实现多少节省。为此,我们建立了一系列探索性结果。更详细地讲,(1)我们首先观察到,基于已知均匀分布学习结果的简单方法为包括AC0,一些线性阈值函数(LTFs)的任意函数在内的几种经过精心研究的类提供了非平凡的无分布学习算法。 ),并使用mod_p门来增强AC0。 (2)接下来,我们提出一种基于电路复杂度的随机限制方法的方法,该方法可用于获得一些上述方法(1)似乎无法实现的无分布学习算法。以这种方式获得的结果包括对LTF-of-AC0电路具有不小的节省的学习算法,以及对学习AC0奇偶校验电路的节省的节省的算法。 (3)最后,我们的第三个贡献是一种通用技术,可以将使用Neciporuk方法证明的下界转换为具有非平凡节省的学习算法。这项技术是我们三种方法中涉及最多的一种,它可以为以前甚至不为人所知的均匀分布学习算法所不知道的一系列类别提供无分布学习算法。这些类包括全基础公式,分支程序,span程序等,直到某个固定的多项式大小为止。

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