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Abstract Meaning Representation Parsing with Rich Linguistic Features

机译:具有丰富语言特征的抽象意义表示分析

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摘要

Lexical and syntactic information have been shown to play important roles in semantic parsing. However, there is still no solid research on the relationship between semantic parsing and different types of linguistic knowledge that support this, e.g., lexical cues, dependency structures, semantic roles, etc. It is also known that dependency structures provide rich syntactic information for various NLP applications. Yet, few applications use dependency structures in an underlying neural network framework. This dissertation introduces a complete framework designed to parse Abstract Meaning Representations (AMRs), a semantic representation that expresses the meaning of a sentence as a directed acyclic graph. To enhance our AMR parser, we first develop a light verb construction (LVC) detector using a SVM. We also link input dependency parses to AMR concepts taking an EM-based approach to generate alignment pairs.;The main parser is split into three sub-components: a frame identifier, a concept identifier, and a transition action identifier. To support these components, we develop a Recursive Neural Network (RevNN) based model as the underlying framework of all three components. RevNN is based on dependency structures combined with distinct linguistic features. RevNN generates a corresponding vector representation for each dependency node, passing these vectors to the three identifiers as the underlying framework. By integrating all the above components, we design a transition-based parser which generates AMR graphs from input dependency parses.;Results show that our LVC detector surpasses comparable systems by 3 to 4% in F1 score, and that this LVC detector supports the AMR parser. Our aligner improves F1 score by 2 to 5% with LVCs information. Moreover, the resulting AMR parser achieves the best Smatch scores among other transition-based AMR parsers. We also show that the RevNN framework helps to integrate different linguistic features for improvement in accuracy of individual components.
机译:词汇和句法信息已显示在语义解析中起重要作用。但是,对于语义解析与支持这种语言表达的不同类型语言知识之间的关系,目前还没有扎实的研究。例如,词汇提示,依赖结构,语义角色等。众所周知,依赖结构为各种语法提供了丰富的句法信息。 NLP应用程序。但是,很少有应用程序在底层神经网络框架中使用依赖项结构。本文介绍了一个完整的框架,用于解析抽象意义表示(AMR),这是一种将语义表达为有向无环图的语义表示。为了增强我们的AMR解析器,我们首先开发了一种使用SVM的光动词构造(LVC)检测器。我们还使用基于EM的方法将输入依赖项分析链接到AMR概念以生成对齐对。;主分析器分为三个子组件:帧标识符,概念标识符和过渡动作标识符。为了支持这些组件,我们开发了基于递归神经网络(RevNN)的模型作为所有三个组件的基础框架。 RevNN基于结合了独特语言特征的依存结构。 RevNN为每个依赖项节点生成一个对应的向量表示,并将这些向量传递给作为基础框架的三个标识符。通过集成上述所有组件,我们设计了一个基于过渡的解析器,该解析器从输入依赖项解析生成AMR图。结果表明,我们的LVC检测器在F1得分上超过同类系统3-4%,并且该LVC检测器支持AMR解析器。利用LVCs信息,我们的定位器可将F1得分提高2%至5%。此外,最终的AMR解析器在其他基于过渡的AMR解析器中获得了最佳的Smatch分数。我们还表明,RevNN框架有助于集成不同的语言功能,以提高单个组件的准确性。

著录项

  • 作者

    Chen, Wei-Te.;

  • 作者单位

    University of Colorado at Boulder.;

  • 授予单位 University of Colorado at Boulder.;
  • 学科 Artificial intelligence.
  • 学位 Ph.D.
  • 年度 2017
  • 页码 152 p.
  • 总页数 152
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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