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Relation dictionary construction and rule learning for PPI extraction from biomedical literatures

机译:从生物医学文献中提取PPI的关系字典构建和规则学习

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Using rules to extract protein-protein interactions (PPI) from biomedical literatures has shown recognized positive effect, but the process of making rules is time-costing and expensive. Relation dictionary-based rule is an effective way to solve the problem, while it also encounters a new problem: how to design an excellent dictionary fast and correctly. This paper proposes a weakly supervised method to construct the PPI relation dictionary, and presents a slot-filling method to learn PPI relation rules automatically according to the position of proteins and relation words. Moreover, this method does not depend on much more manual intervention. We conduct the experiment using 5 types of authoritative biomedical PPI corpus, and the results show that our method can improve the PPI extraction effect obviously.
机译:使用规则从生物医学文献中提取蛋白质-蛋白质相互作用(PPI)已显示出公认的积极作用,但是制定规则的过程既费时又昂贵。基于关系字典的规则是解决该问题的有效方法,但同时也遇到了一个新问题:如何快速正确地设计出色的字典。提出了一种构造PPI关系字典的弱监督方法,提出了一种根据蛋白质和相关词的位置自动学习PPI关系规则的空缺填充方法。而且,这种方法不依赖更多的人工干预。我们使用5种权威的生物医学PPI语料库进行了实验,结果表明我们的方法可以显着提高PPI提取效果。

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