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Semantic Role Labeling with Associated Memory Network

机译:关联存储网络的语义角色标签

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Semantic role labeling (SRL) is a task to recognize all the predicate-argument pairs of a sentence, which has been in a performance improvement bottleneck after a series of latest works were presented. This paper proposes a novel syntax-agnostic SRL model enhanced by the proposed associated memory network (AMN), which makes use of inter-sentence attention of label-known associated sentences as a kind of memory to further enhance dependency-based SRL. In detail, we use sentences and their labels from train dataset as an associated memory cue to help label the target sentence. Furthermore, we compare several associated sentences selecting strategies and label merging methods in AMN to find and utilize the label of associated sentences while attending them. By leveraging the attentive memory from known training data, Our full model reaches state-of-the-art on CoNLL-2009 benchmark datasets for syntax-agnostic setting, showing a new effective research line of SRL enhancement other than exploiting external resources such as well pre-trained language models.
机译:语义角色标记(SRL)是识别句子的所有谓词-参数对的一项任务,在提出了一系列最新著作之后,这一直是性能改进的瓶颈。本文提出了一种新的语法不可知的SRL模型,该模型通过所提出的关联存储网络(AMN)进行了增强,该模型利用标签已知关联语句的语句间注意作为一种存储器来进一步增强基于依存关系的SRL。详细地说,我们使用火车数据集中的句子及其标签作为关联的内存提示,以帮助标记目标句子。此外,我们在AMN中比较了几种相关的句子选择策略和标签合并方法,以找到并利用相关句子的标签。通过利用来自已知训练数据的专心记忆,我们的完整模型在CoNLL-2009基准数据集上达到了语法不可知的最新状态,从而显示了新的有效的SRL增强研究路线,而不仅是利用外部资源预训练的语言模型。

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