Causal relation extraction of biomedical entities is one of the most complex tasks in biomedical text mining, which involves two kinds of information: entity relations and entity functions. One feasible approach is to take relation extraction and function detection as two independent sub-tasks. However, this separate learning method ignores the intrinsic correlation between them and leads to unsatisfactory performance. In this paper, we propose a joint learning model, which combines entity relation extraction and entity function detection to exploit their commonality and capture their inter-relationship, so as to improve the performance of biomedical causal relation extraction. Meanwhile, during the model training stage, different function types in the loss function are assigned different weights. Specifically, the penalty coefficient for negative function instances increases to effectively improve the precision of function detection. Experimental results on the BioCreative-V Track 4 corpus show that our joint learning model outperforms the separate models in BEL statement extraction, achieving the F1 scores of 58.4% and 37.3% on the test set in Stage 2 and Stage 1 evaluations, respectively. This demonstrates that our joint learning system reaches the state-of-the-art performance in Stage 2 compared with other systems.
翻译:生物医学实体的因果关系提取是生物医学文本开采的最复杂任务之一,它涉及两种信息:实体关系和实体功能。一种可行的方法是将关系提取和功能检测作为两个独立的子任务。然而,这种单独的学习方法忽略了它们之间的内在关联,导致业绩不令人满意。在本文件中,我们提议了一个联合学习模式,将实体关系提取和实体功能检测结合起来,以利用它们的共性并捕捉它们之间的相互关系,从而改进生物医学因果关系提取的绩效。与此同时,在模型培训阶段,损失功能的不同功能类型被分配不同的重量。具体地说,负功能的处罚系数增加,以有效提高功能检测的精确性。生物科学-V轨迹4的实验结果显示,我们的联合学习模式超越了BEL语提取中的不同模型,在第二阶段和第一阶段的测试中分别达到了58.4%和37.3%的F1分。这说明我们的联合学习系统与其他系统相比,在第二阶段达到最先进的业绩。