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A Full End-to-End Semantic Role Labeler, Syntax-agnostic Over Syntax-aware?

机译:一个完整的端到端语义角色贴标程序,同词you syntax感知?

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Semantic role labeling (SRL) is to recognize the predicate-argument structure of a sentence, including subtasks of predicate disambiguation and argument labeling. Previous studies usually formulate the entire SRL problem into two or more subtasks. For the first time, this paper introduces an end-to-end neural model which unifiedly tackles the predicate disambiguation and the argument labeling in one shot. Using a biaffine scorer, our model directly predicts all semantic role labels for all given word pairs in the sentence without relying on any syntactic parse information. Specifically, we augment the BiLSTM encoder with a non-linear transformation to further distinguish the predicate and the argument in a given sentence, and model the semantic role labeling process as a word pair classification task by employing the biaffine attentional mechanism. Though the proposed model is syntax-agnostic with local decoder, it outperforms the state-of-the-art syntax-aware SRL systems on the CoNLL-2008, 2009 benchmarks for both English and Chinese. To our best knowledge, we report the first syntax-agnostic SRL model that surpasses all known syntax-aware models.
机译:语义角色标注(SRL)是识别句子的谓语参数的结构,包括谓词消歧和参数标签的子任务。以往的研究通常会拟定整个SRL问题分成两个或两个以上的子任务。首次,本文引入其unifiedly铲球谓词解疑和在一杆的参数标记的端至端的神经模型。使用biaffine的得分手,我们的模型预测,直接在句子中的所有给出的单词对所有语义角色标签不依赖于任何语法解析信息。具体而言,我们用非线性变换的增强编码器BiLSTM进一步区分在给定的句谓语和参数,并通过采用biaffine注意力机构语义角色标注过程作为一个单词对分类的任务模型。尽管该模型是语法无关的本地解码器,它优于在CoNLL - 2008年,2009年为基准,英语和中国的国家的最先进的语法感知SRL系统。据我们所知,我们报告,超过了所有已知的语法感知模型的第一语法无关SRL模型。

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