Abstract

Knowledge base (KB) completion aims to predict new facts from the existing ones in KBs. There are many KB completion approaches, one of the state-of-art approaches is Path Ranking Algorithm (PRA), which predicts new facts based on path types connecting entities. PRA treats the relation prediction as a classification problem, and logistic regression is used as the classification model. In this work, we consider the relation prediction as a ranking problem; learning to rank model is trained on path types to predict new facts. Experiments on YAGO show that our proposed approach outperforms approaches using classification models.

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