Knowledge graph embedding (KGE) models learn the representation of entities and relations in knowledge graphs. Distance-based methods show promising performance on link prediction task, which predicts the result by the distance between two entity representations. However, most of these methods represent the head entity and tail entity separately, which limits the model capacity. We propose two novel distance-based methods named InterHT and InterHT+ that allow the head and tail entities to interact better and get better entity representation. Experimental results show that our proposed method achieves the best results on ogbl-wikikg2 dataset.
翻译:知识嵌入式图(KGE)模型了解各实体和关系在知识图中的代表性。远程方法显示在链接预测任务方面有良好的表现,预测两个实体代表之间的距离结果。但是,这些方法大多分别代表主体和尾巴实体,这限制了模型能力。我们提出了两个新的远程方法,分别名为InterHT和InterHT+,让头和尾实体进行更好的互动并获得更好的实体代表性。实验结果显示,我们提出的方法在ogbl-wikikkg2数据集上取得了最佳结果。