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A multi-task learning based approach to biomedical entity relation extraction

机译:基于多任务学习的生物医学实体关系提取方法

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Automatic extraction of high-quality biomedical entity relations from biomedical texts plays an important role in biomedical text mining. Currently, existing methods generally focus on training a single task model for a specific task (e.g., drug-drug interaction extraction, protein-protein interaction extraction), ignoring the correlation among multiple tasks. To solve the problem, we used neural network-based multi-task learning method to explore the correlation among multiple biomedical relation extraction tasks. In our study, we constructed a fully-shared model (FSM) and a shared-private model (SPM) and further proposed an attention-based main-auxiliary model (Att-MAM). Experimental results on five public biomedical relation extraction datasets show that the multi-task learning can effectively learn the shared information among multiple tasks and obtain better performance than the single task method.
机译:自动提取生物医学文本的高质量生物医学实体关系在生物医学文本挖掘中起着重要作用。目前,现有方法通常专注于培训特定任务的单一任务模型(例如,药物 - 药物相互作用提取,蛋白质 - 蛋白质相互作用提取),忽略多个任务之间的相关性。为了解决问题,我们使用了基于神经网络的多任务学习方法来探讨多种生物医学关系提取任务之间的相关性。在我们的研究中,我们构建了一个完全共享的模型(FSM)和共享私有模型(SPM),并进一步提出了一种基于关注的主辅助模型(ATT-MAM)。五个公共生物医学关系提取数据集的实验结果表明,多任务学习可以有效地学习多个任务之间的共享信息,并获得比单个任务方法更好的性能。

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