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DyERNIE: Dynamic Evolution of Riemannian Manifold Embeddings for Temporal Knowledge Graph Completion

机译:Dynie:riemannian歧管嵌入式的动态演变为颞知识图完成

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There has recently been increasing interest in learning representations of temporal knowledge graphs (KGs), which record the dynamic relationships between entities over time. Temporal KGs often exhibit multiple simultaneous non-Euclidean structures, such as hierarchical and cyclic structures. However, existing embedding approaches for temporal KGs typically learn entity representations and their dynamic evolution in the Euclidean space, which might not capture such intrinsic structures very well. To this end, we propose Dy-ERNIE, a non-Euclidean embedding approach that learns evolving entity representations in a product of Riemannian manifolds, where the composed spaces are estimated from the sectional curvatures of underlying data. Product manifolds enable our approach to better reflect a wide variety of geometric structures on temporal KGs. Besides, to capture the evolutionary dynamics of temporal KGs, we let the entity representations evolve according to a velocity vector defined in the tangent space at each timestamp. We analyze in detail the contribution of geometric spaces to representation learning of temporal KGs and evaluate our model on temporal knowledge graph completion tasks. Extensive experiments on three real-world datasets demonstrate significantly improved performance, indicating that the dynamics of multi-relational graph data can be more properly modeled by the evolution of em-beddings on Riemannian manifolds.
机译:最近在临时知识图表(kgs)的学习表示中越来越兴趣,这随着时间的推移记录了实体之间的动态关系。颞kgs通常表现出多个同时非欧几里德结构,例如分层和循环结构。然而,颞kgs的现有嵌入方法通常学习欧几里德空间中的实体表示及其动态演变,这可能不会捕获这种内在结构。为此,我们提出了一种非欧几里德嵌入方法,该方法学习在riemannian歧管的乘积中不断发展的实体表示,其中由基础数据的截面曲线估计了组合的空间。产品歧管使我们的方法能够更好地反映在颞kgs上的各种几何结构。此外,为了捕获时间kgs的进化动态,我们让实体表示根据每个时间戳的切线空间中定义的速度向量而发展。我们详细介绍了几何空间对时间KGS表示学习的贡献,并在时间知识图形完成任务中评估我们的模型。在三个现实世界数据集上进行了广泛的实验,表明了性能显着提高,表明多关系图数据的动态可以更适当地建模通过黎曼歧管的EM-床单的演变。

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