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Entity-related paths modeling for knowledge base completion

机译:知识库完成的实体相关路径建模

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摘要

Knowledge bases (KBs) are far from complete, necessitating a demand for KB completion. Among various methods, embedding has received increasing attention in recent years. PTransE, an important approach using embedding method in KB completion, considers multiple-step relation paths based on TransE, but ignores the association between entity and their related entities with the same direct relationships. In this paper, we propose an approach called EP-TransE, which considers this kind of association. As a matter of fact, the dissimilarity of these related entities should be taken into consideration and it should not exceed a certain threshold. EPTransE adjusts the embedding vector of an entity by comparing it with its related entities which are connected by the same direct relationship. EPTransE further makes the euclidean distance between them less than a certain threshold. Therefore, the embedding vectors of entities are able to contain rich semantic information, which is valuable for KB completion. In experiments, we evaluated our approach on two tasks, including entity prediction and relation prediction. Experimental results show that our idea of considering the dissimilarity of related entities with the same direct relationships is effective.
机译:知识库(KBS)远非完整,需要对KB完成的需求。在各种方法中,近年来嵌入受到越来越多的关注。 Ptranse是使用嵌入方法在KB完成中的一个重要方法,考虑了基于Transe的多步关系路径,但忽略实体与其相关实体之间的关联,具有相同的直接关系。在本文中,我们提出了一种称为EP-Transe的方法,该方法考虑了这种关联。事实上,应考虑这些相关实体的不相似性,不应超过一定的阈值。 EPTranse通过将其与其相关实体进行比较来调整实体的嵌入向量。 Eptranse进一步使它们之间的欧几里德距离小于特定阈值。因此,实体的嵌入向量能够包含丰富的语义信息,这对于KB完成是有价值的。在实验中,我们在两项任务中评估了我们的方法,包括实体预测和关系预测。实验结果表明,我们考虑具有相同直接关系的相关实体的不一致的想法是有效的。

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