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Graph Convolutions over Constituent Trees for Syntax-Aware Semantic Role Labeling

机译:图形卷曲对语法感知语义角色标记的组成树卷曲

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Semantic role labeling (SRL) is the task of identifying predicates and labeling argument spans with semantic roles. Even though most semantic-role formalisms are built upon constituent syntax, and only syntactic constituents can be labeled as arguments (e.g., FrameNet and PropBank), all the recent work on syntax-aware SRL relies on dependency representations of syntax. In contrast, we show how graph convolutional networks (GCNs) can be used to encode constituent structures and inform an SRL system. Nodes in our SpanGCN correspond to constituents. The computation is done in 3 stages. First, initial node representations are produced by 'composing' word representations of the first and last words in the constituent. Second, graph convolutions relying on the constituent tree are performed, yielding syntactically-informed constituent representations. Finally, the constituent representations are 'decomposed' back into word representations, which arc used as input to the SRL classifier. We evaluate SpanGCN against alternatives, including a model using GCNs over dependency trees, and show its effectiveness on standard English SRL benchmarks CoNLL-2005, CoNLL-2012, and FrameNet.
机译:语义角色标记(SRL)是用语义角色识别谓词和标记参数跨度的任务。尽管在组成语法上建立了大多数语义 - 角色形式主义,但只有句法成分可以被标记为参数(例如,Framenet和Propbank),但是近似语法感知SRL的所有工作都依赖于语法的依赖性表示。相比之下,我们展示了图形卷积网络(GCNS)如何用于编码组成结构并通知SRL系统。我们的Spangcn中的节点对应于成分。计算是在3个阶段完成的。首先,初始节点表示由组成部分中的第一个和最后一个单词的字表示来产生初始节点表示。其次,执行依赖于组成树的图形卷积,产生了语法上通知的组成表示。最后,组成表示将“分解”回到字表示中,该表示将用作SRL分类器的输入。我们评估Spangcn对替代方案,包括使用GCNS过度树的模型,并在标准英语SRL基准Conll-2005,Conll-2012和FrameNet上显示其效力。

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