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Distant Supervision for Relation Extraction with Sentence Selection and Interaction Representation

机译:与句子选择和互动代表的关系提取遥远的监督

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Distant supervision (DS) has been widely used for relation extraction (RE), which automatically generates large-scale labeled data. However, there is a wrong labeling problem, which affects the performance of RE. Besides, the existing method suffers from the lack of useful semantic features for some positive training instances. To address the above problems, we propose a novel RE model with sentence selection and interaction representation for distantly supervised RE. First, we propose a pattern method based on the relation trigger words as a sentence selector to filter out noisy sentences to alleviate the wrong labeling problem. After clean instances are obtained, we propose the interaction representation using the word-level attention mechanism-based entity pairs to dynamically increase the weights of the words related to entity pairs, which can provide more useful semantic information for relation prediction. The proposed model outperforms the strongest baseline by 2.61 in F1-score on a widely used dataset, which proves that our model performs significantly better than the state-of-the-art RE systems.
机译:远程监督(DS)已广泛用于相关提取(RE),其自动生成大规模标记数据。但是,存在错误的标签问题,这会影响重新的性能。此外,现有方法遭受了一些积极训练实例的缺乏有用的语义特征。为了解决上述问题,我们提出了一种新的RE模型,具有句子选择和互动表示,远程监督的RE。首先,我们提出了一种基于关系触发单词作为句子选择器的模式方法,以过滤噪音以缓解错误的标签问题。在获得清洁实例之后,我们提出了使用基于词级注意机制的实体对的交互式表示来动态地增加与实体对相关的单词的权重,其可以为关系预测提供更有用的语义信息。所提出的模型在广泛使用的数据集中占F1分数的最强大的基线,这证明了我们的模型比最先进的RE系统更好地执行。

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