计算机科学
关系数据库
数据建模
数据科学
数据挖掘
数据库
作者
Antoine Bordes,Nicolas Usunier,Alberto García-Durán,Jason Weston,Oksana Yakhnenko
出处
期刊:Le Centre pour la Communication Scientifique Directe - HAL - Diderot
日期:2013-12-05
被引量:4553
摘要
We consider the problem of embedding entities and relationships of multi-relational data in low-dimensional vector spaces. Our objective is to propose a canonical model which is easy to train, contains a reduced number of parameters and can scale up to very large databases. Hence, we propose TransE, a method which models relationships by interpreting them as translations operating on the low-dimensional embeddings of the entities. Despite its simplicity, this assumption proves to be powerful since extensive experiments show that TransE significantly outperforms state-of-the-art methods in link prediction on two knowledge bases. Besides, it can be successfully trained on a large scale data set with 1M entities, 25k relationships and more than 17M training samples.
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