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Enhancing Joint Entity and Relation Extraction with Language Modeling and Hierarchical Attention

机译:通过语言建模和层次化注意力增强联合实体和关系提取

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Both entity recognition and relation extraction can benefit from being performed jointly, allowing them to enhance each other. However, existing methods suffer from the sparsity of relevant labels and strongly rely on external natural language processing tools, leading to error propagation. To tackle these problems, we propose an end-to-end joint framework for entity recognition and relation extraction with an auxiliary training objective on language modeling, i.e.. learning to predict surrounding words for each word in sentences. Furthermore, we incorporate hierarchical multi-head attention mechanisms into the joint extraction model to capture vital semantic information from the available texts. Experiments show that the proposed approach consistently achieves significant improvements on joint extraction task of entities and relations as compared with strong baselines.
机译:实体识别和关系提取都可以从联合执行中受益,从而使它们彼此增强。但是,现有方法存在相关标签稀疏的问题,并且严重依赖于外部自然语言处理工具,从而导致错误传播。为了解决这些问题,我们提出了一种用于实体识别和关系提取的端到端联合框架,并在语言建模方面提供了辅助培训目标,即学习预测句子中每个单词的周围单词。此外,我们将分层的多头注意机制纳入联合提取模型中,以从可用文本中捕获重要的语义信息。实验表明,与强基准相比,该方法在实体和关系的联合提取任务上一直取得了显着改善。

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