使用固定的放大函数点精确识别电路

S. Goldman, M. Kearns, R. Schapire
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引用次数: 40

摘要

介绍了一种精确识别某类只读一次布尔公式的技术。该方法基于对目标公式的输入输出行为在一个概率分布上进行抽样,该概率分布由公式的放大函数的不动点决定(定义为当每个输入位独立为1时,公式输出1的概率为p)。通过对定点分布的易抽样变量进行各种统计检验,它可以有效地推断任何对数深度目标族的所有结构信息(具有高概率)。结果证明了大类别公式的短通用识别序列的存在性。本文描述了该算法的扩展,以处理高噪声率和学习L.G. Valiant(1984)模型中关于特定分布的无界深度公式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exact identification of circuits using fixed points of amplification functions
A technique for exactly identifying certain classes of read-once Boolean formulas is introduced. The method is based on sampling the input-output behavior of the target formula on a probability distribution which is determined by the fixed point of the formula's amplification function (defined as the probability that a 1 is output by the formula when each input bit is 1 independently with probability p). By performing various statistical tests on easily sampled variants of the fixed-point distribution, it is possible to infer efficiently all structural information about any logarithmic-depth target family (with high probability). The results are used to prove the existence of short universal identification sequences for large classes of formulas. Extensions of the algorithms to handle high rates of noise and to learn formulas of unbounded depth in L.G. Valiant's (1984) model with respect to specific distributions are described.<>
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