神经语义角色标注的句法角色

IF 3.7 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Computational Linguistics Pub Date : 2020-09-12 DOI:10.1162/coli_a_00408
Z. Li, Hai Zhao, Shexia He, Jiaxun Cai
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引用次数: 16

摘要

语义角色标注(SRL)致力于识别句子的语义谓词-论证结构。以往基于传统模型的研究表明,句法信息对SRL的性能有显著的影响;然而,最近的一些神经SRL研究对句法信息的必要性提出了挑战,这些研究表明,在没有句法骨架的情况下,句法信息对神经语义角色标记的重要性大大降低,特别是当与最新的深度神经网络和大规模预训练语言模型配对时。尽管有这个概念,神经SRL领域仍然缺乏对句法信息在SRL中的相关性的系统和充分的研究,无论是依赖关系还是单语和多语设置。本文旨在量化深度学习框架中句法信息对神经SRL的重要性。我们介绍了三种典型的SRL框架(基线):基于序列的、基于树的和基于图的,它们伴随着两类利用语法信息的方法:基于语法修剪的和基于语法特征的。在CoNLL-2005、-2009和-2012基准测试中对所有可用语言进行了实验,结果表明,在一定条件下,神经SRL模型仍然可以从语法信息中获益。此外,我们展示了语法对神经SRL模型的定量意义,并使用现有模型进行了彻底的实证调查。
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Syntax Role for Neural Semantic Role Labeling
Semantic role labeling (SRL) is dedicated to recognizing the semantic predicate-argument structure of a sentence. Previous studies in terms of traditional models have shown syntactic information can make remarkable contributions to SRL performance; however, the necessity of syntactic information was challenged by a few recent neural SRL studies that demonstrate impressive performance without syntactic backbones and suggest that syntax information becomes much less important for neural semantic role labeling, especially when paired with recent deep neural network and large-scale pre-trained language models. Despite this notion, the neural SRL field still lacks a systematic and full investigation on the relevance of syntactic information in SRL, for both dependency and both monolingual and multilingual settings. This paper intends to quantify the importance of syntactic information for neural SRL in the deep learning framework. We introduce three typical SRL frameworks (baselines), sequence-based, tree-based, and graph-based, which are accompanied by two categories of exploiting syntactic information: syntax pruning-based and syntax feature-based. Experiments are conducted on the CoNLL-2005, -2009, and -2012 benchmarks for all languages available, and results show that neural SRL models can still benefit from syntactic information under certain conditions. Furthermore, we show the quantitative significance of syntax to neural SRL models together with a thorough empirical survey using existing models.
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来源期刊
Computational Linguistics
Computational Linguistics 工程技术-计算机:跨学科应用
CiteScore
15.80
自引率
0.00%
发文量
45
审稿时长
>12 weeks
期刊介绍: Computational Linguistics, the longest-running publication dedicated solely to the computational and mathematical aspects of language and the design of natural language processing systems, provides university and industry linguists, computational linguists, AI and machine learning researchers, cognitive scientists, speech specialists, and philosophers with the latest insights into the computational aspects of language research.
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