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引用次数: 0

摘要

知识库是知识管理的一个极其重要的数据库,它对问答、查询扩展等相关任务非常有用。然而,它经常遭受不完整。在本文中,我们提出了一个三向亲和嵌入模型(Three-Way Affinity Embeddings model, TWAE),将实体和关系映射到两个向量中,并考虑其中任意两个向量的直接交互,然后预测附加事实的可能真值。其基本思想是,额外预测事实的可信度是由使用每个项目的潜在表征的三元组中的三向亲和力决定的。实验表明,该模型具有良好的性能。
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Learning three-way affinity embeddings for knowledge base completion
Knowledge bases are an extremely important database for knowledge management, which is very useful for question answering, query expansion and other related tasks. However, it often suffers from incompleteness. In this paper, we propose a Three-Way Affinity Embeddings model (TWAE) to map both the entity and relationship into two vectors and consider any two of them direct interaction, and then predict the possible truth of additional facts. The basic idea is that the confidence of the additional predicted fact is determined by three-way affinities in the triplet using the latent representation of each item. Experiments show that our model performs excellent.
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