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Chinese medical relation extraction based on multi-hop self-attention mechanism

机译:基于多跳自我关注机制的中国医学关系提取

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摘要

The medical literature is the most important way to demonstrate academic achievements and academic exchanges. Massive medical literature has become a huge treasure trove of knowledge. It is necessary to automatically extract implicit medical knowledge from the medical literature. Medical relation extraction aims to automatically extract medical relations from the medical text for various medical researches. However, there are a few kinds of research in Chinese medical literature. Currently, the popular methods are based on neural networks, which focus on semantic information on one aspect of the sentence. However, complex semantic information in the sentence determines the relation between entities, the semantic information cannot be represented by one sentence vector. In this paper, we propose an attention-based model to extract the multi-aspect semantic information for the Chinese medical relation extraction by multi-hop attention mechanism. The model could generate multiple weight vectors for the sentence through each attention step, therefore, we can generate the different semantic representation of a sentence, respectively. Our model is evaluated by using Chinese medical literature from China National Knowledge Infrastructure (CNKI). It achieves an F1 score of 93.19% for therapeutic relation tasks and 73.47% for causal relation tasks.
机译:医学文献是展示学术成果和学术交流最重要的方式。大规模的医学文学已成为知识的巨大宝库。有必要自动从医学文献中提取隐含的医学知识。医学关系提取旨在自动提取来自医学文本的医学关系以进行各种医学研究。但是,中国医学文献中有几种研究。目前,流行的方法基于神经网络,其专注于关于句子的一个方面的语义信息。然而,句子中的复杂语义信息确定实体之间的关系,语义信息不能由一句句子向量表示。在本文中,我们提出了一种基于关注的模型,以通过多跳注意机制提取中国医学关系提取的多个方面语义信息。该模型可以通过每个关注步骤生成多个权重向量,因此,我们可以分别生成句子的不同语义表示。我们的模型是通过从中国知识基础设施(CNKI)的中国医学文献来评估。它达到治疗关系任务的F1分数为93.19%,而且因果关系任务的73.47%。

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