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Context-Aware Temporal Knowledge Graph Embedding

机译:上下文感知的时间知识图嵌入

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Knowledge graph embedding (KGE) is an important technique used for knowledge graph completion (KGC). However, knowledge in practice is time-variant and many relations are only valid for a certain period of time. This phenomenon highlights the importance of temporal knowledge graph embeddings. Currently, existing temporal KGE methods only focus on one aspect of facts, i.e., the factual plausibility, while ignoring the other aspect, i.e., the temporal consistency. Temporal consistency models the interactions between a fact and its contexts, and thus is able to capture fine-granularity temporal relationships, such as temporal orders, temporal distances and overlapping. In order to determine the useful contexts for the fact to be predicted, we propose a two-way strategy for context selection. In particular, we decompose the target fact into two parts, relation and entities, and measure the usefulness of a context for each part respectively. Furthermore, we adopt deep neural networks to encode contexts and score the temporal consistency. This consistency is used with factual plausibility to model a fact. Due to the incorporation of temporal information and the interactions between facts and contexts, our model learns a more representative embeddings for temporal KG. We conduct extensive experiments on real world datasets and the experimental results verify the effectiveness of our proposals.
机译:知识图嵌入(KGE)是用于知识图完成(KGC)的一项重要技术。但是,实践中的知识是随时间变化的,并且许多关系仅在特定时间段内有效。这种现象凸显了时间知识图嵌入的重要性。当前,现有的时间KGE方法仅关注事实的一个方面,即事实合理性,而忽略了另一方面,即时间一致性。时间一致性对事实及其上下文之间的交互进行建模,因此能够捕获细粒度的时间关系,例如时间顺序,时间距离和重叠。为了确定要预测的事实的有用上下文,我们提出了一种上下文选择的双向策略。特别是,我们将目标事实分解为关系和实体两部分,并分别测量每个部分的上下文有用性。此外,我们采用深度神经网络对上下文进行编码,并对时间一致性进行评分。这种一致性与事实合理性一起用于对事实建模。由于合并了时间信息以及事实和上下文之间的相互作用,因此我们的模型为时间KG学习了更具代表性的嵌入。我们对现实世界的数据集进行了广泛的实验,实验结果验证了我们建议的有效性。

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