从统计查询中高效的容噪学习

M. Kearns
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引用次数: 809

摘要

在本文中,我们研究了Valiant及其变体的概率学习模型中存在分类噪声的学习问题。为了以最一般的方式识别“鲁棒”学习算法的类别,我们形式化了一个新的但相关的统计查询学习模型。直观地说,在这个模型中,学习算法被禁止检查未知目标函数的单个示例,但可以访问提供随机示例样本空间概率估计的oracle。我们的一个主要结果表明,在Valiant的模型中,任何可以从统计查询中学习的函数类实际上都是可以用分类噪声学习的,噪声率接近1/2的信息论障碍。然后,我们展示了统计查询模型的通用性,表明实际上Valiant模型及其变体中可以学习的每个类也可以在新模型中学习(因此可以在存在噪声的情况下学习)。这句话的一个值得注意的例外是奇偶校验函数类,我们证明了它不能从统计查询中学习,并且没有已知的容噪算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient noise-tolerant learning from statistical queries
In this paper, we study the problem of learning in the presence of classification noise in the probabilistic learning model of Valiant and its variants. In order to identify the class of “robust” learning algorithms in the most general way, we formalize a new but related model of learning from statistical queries. Intuitively, in this model, a learning algorithm is forbidden to examine individual examples of the unknown target function, but is given access to an oracle providing estimates of probabilities over the sample space of random examples. One of our main results shows that any class of functions learnable from statistical queries is in fact learnable with classification noise in Valiant’s model, with a noise rate approaching the informationtheoretic barrier of 1/2. We then demonstrate the generality of the statistical query model, showing that practically every class learnable in Valiant’s model and its variants can also be learned in the new model (and thus can be learned in the presence of noise). A notable exception to this statement is the class of parity functions, which we prove is not learnable from statistical queries, and for which no noise-tolerant algorithm is known.
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