论文标题
具有链接预测的语义相关意识的广义关系学习
Generalized Relation Learning with Semantic Correlation Awareness for Link Prediction
论文作者
论文摘要
开发链接预测模型以自动完整的知识图成为了重大研究兴趣的重点。链接预测taskhavetwonaturalabromblembrombles的当前方法:1)KGS中的关系分布通常是不平衡的,2)在实际情况下存在许多看不见的关系。这两个问题限制了现有链接预测模型的培训有效性和实际应用。我们主张对KGS的整体理解,并在这项工作中提出了一个统一的广义关系学习框架GRL来解决上述两个问题,可以将其插入现有的链接预测模型中。 GRL进行了广泛的关系学习,该学习意识到关系是连接语义相似关系的桥梁之间的语义相关性。在使用GRL进行训练之后,在矢量空间中语义上相似的关系的亲密关系和歧视关系的歧视得到了改善。我们对六个基准进行全面的实验,以证明链接预测任务中GRL的出色能力。特别是,发现GRL可以增强现有的链接预测模型,从而使它们对不平衡的关系分布不敏感,并且能够学习看不见的关系。
Developing link prediction models to automatically complete knowledge graphs has recently been the focus of significant research interest. The current methods for the link prediction taskhavetwonaturalproblems:1)the relation distributions in KGs are usually unbalanced, and 2) there are many unseen relations that occur in practical situations. These two problems limit the training effectiveness and practical applications of the existing link prediction models. We advocate a holistic understanding of KGs and we propose in this work a unified Generalized Relation Learning framework GRL to address the above two problems, which can be plugged into existing link prediction models. GRL conducts a generalized relation learning, which is aware of semantic correlations between relations that serve as a bridge to connect semantically similar relations. After training with GRL, the closeness of semantically similar relations in vector space and the discrimination of dissimilar relations are improved. We perform comprehensive experiments on six benchmarks to demonstrate the superior capability of GRL in the link prediction task. In particular, GRL is found to enhance the existing link prediction models making them insensitive to unbalanced relation distributions and capable of learning unseen relations.