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Using Lexical and Compositional Semantics to Improve HPSG Parse Selection.

机译:使用词汇和组合语义来改进HPSG解析选择。

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摘要

Accurate parse ranking is essential for deep linguistic processing applications and is one of the classic problems for academic research in NLP. Despite significant advances, there remains a big need for improvement, especially for domains where gold-standard training data is scarce or unavailable. An overwhelming majority of parse ranking methods today rely on modeling syntactic derivation trees. At the same time, parsers that output semantic representations in addition to syntactic derivations (like the monostratal DELPH-IN HPSG parsers) offer an alternative structure for training the ranking model, which could be further combined with the baseline syntactic model score for re-ranking. This thesis proposes a method for ranking the semantic sentence representations, taking advantage of compositional and lexical semantics. The methodology does not require sense-disambiguated data, and therefore can be adopted without requiring a solution for word sense disambiguation. The approach was evaluated in the context of HPSG parse disambiguation for two different domains, as well as in a cross-domain setting, yielding relative error rate reduction of 11.36% for top-10 parse selection compared to the baseline syntactic derivation-based parse ranking model, and a standalone ranking accuracy approaching the accuracy of the baseline syntactic model in the best setup.
机译:准确的分析排名对于深度语言处理应用至关重要,也是NLP学术研究中的经典问题之一。尽管取得了重大进展,但仍然存在很大的改进需求,尤其是对于缺乏或缺乏金标准培训数据的领域。如今,绝大多数语法分析排名方法都依赖于对语法派生树进行建模。同时,除了语法导出以外,还输出语义表示的解析器(例如单层DELPH-IN HPSG解析器)提供了一种用于训练排名模型的替代结构,可以将其与基线语法模型得分进一步组合以进行重新排名。本文提出了一种利用组合语义和词汇语义的语义句子表征排序方法。该方法不需要语义歧义化的数据,因此可以采用而无需解决词义歧义的解决方案。在针对两个不同域的HPSG解析歧义分析的背景下以及在跨域设置中评估了该方法,与基于基线句法推导的解析排名相比,前10个解析选择的相对错误率降低了11.36%模型,以及在最佳设置中接近基线句法模型准确性的独立排名准确性。

著录项

  • 作者

    Pozen, Zinaida.;

  • 作者单位

    University of Washington.;

  • 授予单位 University of Washington.;
  • 学科 Language Linguistics.
  • 学位 Masters
  • 年度 2013
  • 页码 82 p.
  • 总页数 82
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:41:59

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