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TuckER: Tensor Factorization for Knowledge Graph Completion

机译:TuckER:用于知识图完成的张量分解

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Knowledge graphs are structured representations of real world facts. However, they typically contain only a small subset of all possible facts. Link prediction is a task of inferring missing facts based on existing ones. We propose TuckER. a relatively straightforward but powerful linear model based on Tucker decomposition of the binary tensor representation of knowledge graph triples. TuckER outperforms previous state-of-the-art models across standard link prediction datasets. acting as a strong baseline for more elaborate models. We show that TuckER is a fully expressive model, derive sufficient bounds on its embedding dimensionalities and demonstrate that several previously introduced linear models can be viewed as special cases of TuckER.
机译:知识图是现实世界事实的结构化表示。但是,它们通常仅包含所有可能事实的一小部分。链接预测是一项根据现有事实推断缺失事实的任务。我们建议TuckER。一个相对简单但功能强大的线性模型,该模型基于知识图三元组的二元张量表示的Tucker分解。 TuckER在标准链接预测数据集上的表现优于以前的最新模型。为更精细的模型提供了坚实的基础。我们证明TuckER是一个完全表达的模型,在其嵌入维数上获得了足够的边界,并证明了几个以前引入的线性模型可以看作TuckER的特例。

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