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Probabilistic learnability of context-free grammars with basic distributional properties from positive examples

机译:从正例中获取具有基本分布特性的上下文无关文法的概率可学习性

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In recent years different interesting subclasses of CFLS have been found to be learnable by techniques generically called distributional learning. The theoretical study on the exact learning of GIs by those techniques under different learning schemes is now quite mature. On the other hand, positive results on the PAC learnability of CFLS are rather limited and quite weak. This paper shows that several subclasses of context-free languages that are known to be exactly learnable with positive data and membership queries by distributional learning techniques are PAC learnable from positive data under some assumptions on the string distribution. (C) 2015 Elsevier B.V. All rights reserved.
机译:近年来,发现CFLS的不同有趣的子类可以通过通常称为分布学习的技术来学习。通过这些技术在不同的学习方案下精确学习地理标志的理论研究现已相当成熟。另一方面,关于CFLS的PAC学习性的积极结果是相当有限的,而且还很薄弱。本文显示,已知一些可以根据正数据准确学习的上下文无关语言子类,以及通过分布式学习技术进行的隶属关系查询,可以在某些关于字符串分布的假设下从正数据中学习PAC。 (C)2015 Elsevier B.V.保留所有权利。

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