The effectiveness of knowledge graph embedding (KGE) largely depends on the ability to model intrinsic relation patterns and mapping properties. However, existing approaches can only capture some of them with insufficient modeling capacity. In this work, we propose a more powerful KGE framework named HousE, which involves a novel parameterization based on two kinds of Householder transformations: (1) Householder rotations to achieve superior capacity of modeling relation patterns; (2) Householder projections to handle sophisticated relation mapping properties. Theoretically, HousE is capable of modeling crucial relation patterns and mapping properties simultaneously. Besides, HousE is a generalization of existing rotation-based models while extending the rotations to high-dimensional spaces. Empirically, HousE achieves new state-of-the-art performance on five benchmark datasets. Our code is available at https://github.com/anrep/HousE.
翻译:知识图嵌入(KGE)的有效性主要取决于建立内在关系模式和绘图属性的能力,但是,现有的方法只能以模型能力不足来捕捉其中一些,在这项工作中,我们提议了一个更强大的KGE框架,名为HousE, 包括基于两种家庭式变迁的新式参数化:(1) 家户轮作,以实现建模关系模式的超强能力;(2) 家户预测,处理复杂的关系绘图属性。理论上,HousE能够同时建模关键关系模式和绘图属性。此外,HousE是现有基于轮换的模式的概括化,同时将轮用扩大到高维空间。HousE在五个基准数据集上实现了新的最新状态,我们的代码可在https://github.com/anrep/HousE查阅。