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Domain-Adaptation Technique for Semantic Role Labeling with Structural Learning

机译:结构学习中语义角色标记的领域自适应技术

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Semantic role labeling (SRL) is a task in natural- language processing with the aim of detecting predicates in the text, choosing their correct senses, identifying their associated arguments, and predicting the semantic roles of the arguments. Developing a high-performance SRL system for a domain requires manually annotated training data of large size in the same domain. However, such SRL training data of sufficient size is available only for a few domains. Constructing SRL training data for a new domain is very expensive. Therefore, domain adaptation in SRL can be regarded as an important problem. In this paper, we show that domain adaptation for SRL systems can achieve state-of-the-art performance when based on structural learning and exploiting a prior model approach. We provide experimental results with three different target domains showing that our method is effective even if training data of small size is available for the target domains. According to experimentations, our proposed method outperforms those of other research works by about 2% to 5% in F-score.
机译:语义角色标记(SRL)是自然语言处理中的一项任务,旨在检测文本中的谓词,选择其正确的含义,识别其关联的论点并预测这些论点的语义作用。为一个域开发高性能的SRL系统需要在同一域中手动注释大型培训数据。但是,这种足够大的SRL训练数据仅可用于少数几个域。为新域构建SRL培训数据非常昂贵。因此,SRL中的域适应可以视为一个重要问题。在本文中,我们表明,基于结构学习并利用现有模型方法,SRL系统的域自适应可以达到最新的性能。我们提供了三个不同目标域的实验结果,表明即使小规模的训练数据可用于目标域,我们的方法也有效。根据实验,我们提出的方法在F评分方面比其他研究工作高出大约2%至5%。

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