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Biomedical event extraction based on GRU integrating attention mechanism

机译:基于GRU集成注意力机制的生物医学事件提取

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Biomedical event extraction is a crucial task in biomedical text mining. As the primary forum for international evaluation of different biomedical event extraction technologies, BioNLP Shared Task represents a trend in biomedical text mining toward fine-grained information extraction (IE). The fourth series of BioNLP Shared Task in 2016 (BioNLP-ST’16) proposed three tasks, in which the Bacteria Biotope event extraction (BB) task has been put forward in the earlier BioNLP-ST. Deep learning methods provide an effective way to automatically extract more complex features and achieve notable results in various natural language processing tasks. The experimental results show that the presented approach can achieve an F-score of 57.42% in the test set, which outperforms previous state-of-the-art official submissions to BioNLP-ST 2016. In this paper, we propose a novel Gated Recurrent Unit Networks framework integrating attention mechanism for extracting biomedical events between biotope and bacteria from biomedical literature, utilizing the corpus from the BioNLP’16 Shared Task on Bacteria Biotope task. The experimental results demonstrate the potential and effectiveness of the proposed framework.
机译:生物医学事件提取是生物医学文本挖掘中的关键任务。作为对不同生物医学事件提取技术进行国际评估的主要论坛,BioNLP共享任务代表了生物医学文本挖掘向细粒度信息提取(IE)的趋势。 2016年第四批BioNLP共享任务(BioNLP-ST’16)提出了三个任务,其中,细菌Biotope事件提取(BB)任务已在较早的BioNLP-ST中提出。深度学习方法提供了一种有效的方法,可以自动提取更复杂的功能并在各种自然语言处理任务中取得显著成果。实验结果表明,所提出的方法在测试集中的F分数可达到57.42%,优于之前向BioNLP-ST 2016提交的最新技术水平。在本文中,我们提出了一种新颖的Gated Recurrent Unit Networks框架集成了注意力机制,可利用BioNLP'16细菌生境任务共享任务中的语料从生物医学文献中提取生境与细菌之间的生物医学事件。实验结果证明了该框架的潜力和有效性。

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