Improving Relation Classification with Multi-graph GCN

Ya Zhang, Shuai Qin
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Abstract

As a basis task in the field of Natural Language Processing (NLP), relation extraction task aims to extract the relation between two entities in a text. Most existing models rely on a single semantic feature of the sentence for relation classification. In this paper, we present MGGCM model, a novel neural network to classify the relation of two entities in a sentence. Our neural architecture leverages two distinct graphs which are the dependency tree path and the relation-entity graph respectively. In this model, we integrate both semantic features and structural features to enhance the performance of relation extraction model. We encode the sentence through BiLSTM, obtain its structural features by GCN, and pay more attention to the entity information which is related to the target entity pair, and finally fuse the features to obtain the classification results. We test our model on the SemEval 2010 relation classification task, and achieve an F1-score of 85.7%, higher than competing methods in literature.
基于多图GCN的关系分类改进
关系提取任务是自然语言处理(NLP)领域的一项基础任务,旨在提取文本中两个实体之间的关系。大多数现有模型依赖于句子的单个语义特征来进行关系分类。本文提出了一种新的神经网络MGGCM模型,用于对句子中两个实体之间的关系进行分类。我们的神经结构利用了两个不同的图,分别是依赖树路径和关系实体图。在该模型中,我们将语义特征和结构特征相结合,提高了关系抽取模型的性能。我们通过BiLSTM对句子进行编码,通过GCN获得句子的结构特征,并更加关注与目标实体对相关的实体信息,最后融合特征得到分类结果。我们在SemEval 2010关系分类任务上测试了我们的模型,并获得了85.7%的f1得分,高于文献中的竞争方法。
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