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Knowledge Association with Hyperbolic Knowledge Graph Embeddings

机译:与双曲识知识图形嵌入的知识关联

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Capturing associations for knowledge graphs (KGs) through entity alignment, entity type inference and other related tasks benefits NLP applications with comprehensive knowledge representations. Recent related methods built on Euclidean embeddings are challenged by the hierarchical structures and different scales of KGs. They also depend on high embedding dimensions to realize enough expressiveness. Differently, we explore with low-dimensional hyperbolic embeddings for knowledge association. We propose a hyperbolic relational graph neural network for KG embedding and capture knowledge associations with a hyperbolic transformation. Extensive experiments on entity alignment and type inference demonstrate the effectiveness and efficiency of our method.
机译:通过实体对齐,实体类型推断和其他相关任务捕获知识图表(KGS)的关联,具有全面的知识表示的NLP应用程序。基于欧几里德嵌入的最近建立的相关方法受到分层结构和kgs不同尺度的挑战。它们还依赖于高嵌入尺寸来实现足够的表现力。不同的是,我们探索了用于知识协会的低维双曲嵌入式。我们提出了一个双曲线关系图神经网络,用于kg嵌入和捕获具有双曲转换的知识关联。对实体对准和类型推断的广泛实验证明了我们方法的有效性和效率。

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