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Obligation and Prohibition Extraction Using Hierarchical RNNs

机译:使用分层RNN的义务和禁止提取

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We consider the task of detecting contractual obligations and prohibitions. We show that a self-attention mechanism improves the performance of a bilstm classifier, the previous state of the art for this task, by allowing it to focus on indicative tokens. We also introduce a hierarchical bilstm, which converts each sentence to an embedding, and processes the sentence cmbeddings to classify each sentence. Apart from being faster to train, the hierarchical bilstm outperforms the flat one, even when the latter considers surrounding sentences, because the hierarchical model has a broader discourse view.
机译:我们考虑侦查合同义务和禁令的任务。我们表明,通过允许将其专注于指示性令牌,自我关注机制提高了Bilstm分类器的性能,这是针对这项任务的先前艺术状态。我们还介绍了一个分层Bilstm,它将每个句子转换为嵌入,并处理句子cmbeddings以对每个句子进行分类。除了培训速度时,即使后者考虑周围的句子,分层Bilstm也胜过平坦的,因为层次模型具有更广泛的话语视图。

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