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Recognizing Nested Named Entity in Biomedical Texts: A Neural Network Model with Multi-Task Learning

机译:识别生物医学文本中的嵌套命名实体:具有多任务学习的神经网络模型

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Many named entities usually contain nested entities in biomedical texts. Nested entities pose challenge to the task of named entity recognition. Traditional methods try to solve the problem as a graph-structure prediction problem. However, these methods fail to sufficiently capture the boundaries information between nested entities, which limits the performance of the task. In this paper, we take a different view by solving each unique entity type as a separate task, using multi-task learning with dispatched attention to facilitate information exchange between tasks. Results on GENIA corpus show that the proposed method is highly effective, obtaining the best results in the literature.
机译:许多命名实体通常在生物医学文本中包含嵌套实体。嵌套实体对命名实体识别的任务提出了挑战。传统方法试图将其解决为图结构预测问题。但是,这些方法无法充分捕获嵌套实体之间的边界信息,这限制了任务的性能。在本文中,我们通过将每个任务的唯一实体类型作为一个单独的任务来解决问题,使用多任务学习并分派注意力来促进任务之间的信息交换,从而采取不同的观点。 GENIA语料库的结果表明,该方法是有效的,在文献中获得了最好的结果。

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