首页> 外文期刊>Applied Intelligence: The International Journal of Artificial Intelligence, Neural Networks, and Complex Problem-Solving Technologies >Towards effective parsing with neural networks: Inherent generalisations and bounded resource effects
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Towards effective parsing with neural networks: Inherent generalisations and bounded resource effects

机译:借助神经网络实现有效解析:固有的概括和有限的资源效应

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摘要

This article explores how the effectiveness of learning to parse with neural networks can be improved by including two architectural features relevant to language: generalisations across syntactic constituents and bounded resource effects. A number of neural network parsers have recently been proposed, each with a different approach to the representational problem of outputting parse trees. In addition, some of the parsers have explicitly attempted to capture an important regularity within language, which is to generalise information across syntactic constituents. A further property of language is that natural bounds exist for the number of constituents which a parser need retain for later processing. Both the generalisations and the resource bounds may be captured in architectural features which enhance the effectiveness and efficiency of learning to parse with neural networks. We describe a number of different types of neural network parser, and compare them with respect to these two features. These features are both explicitly present in the Simple Synchrony Network parser, and we explore and illustrate their impact on the process of learning to parse in some experiments with a recursive grammar. [References: 33]
机译:本文探讨了如何通过包含与语言有关的两个体系结构功能来提高学习与神经网络解析的效率:跨语法成分的泛化和有限的资源效应。最近已经提出了许多神经网络解析器,每种都使用不同的方法来解决输出解析树的表示性问题。此外,某些解析器已明确尝试捕获语言内的重要规律性,这是对跨语法成分的信息进行概括。语言的另一个特性是,解析器需要保留以供后续处理的组成部分数量的自然界限。概括和资源界限都可以捕获在体系结构特征中,这些特征增强了学习与神经网络解析的有效性和效率。我们描述了许多不同类型的神经网络解析器,并就这两个功能进行了比较。这些功能都明确地存在于简单同步网络解析器中,并且我们在递归语法的一些实验中探索和说明了它们对学习解析过程的影响。 [参考:33]

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