Abstract
Knowledge Graphs (KGs) are graph-structured knowledge bases storing factual information about real-world entities. Understanding the uniqueness of each entity is crucial to the analyzing, sharing, and reusing of KGs. Traditional profiling technologies encompass a vast array of methods to find distinctive features in various applications, which can help to differentiate entities in the process of human understanding of KGs. In this work, we present a novel profiling approach to identify distinctive entity features. The distinctiveness of features is carefully measured by a HAS model, which is a scalable representation learning model to produce a multi-pattern entity embedding. We fully evaluate the quality of entity profiless generated from real KGs. The results show that our approach facilitates human understanding of entities in KGs.
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CITATION STYLE
Zhang, X., Yang, Q., Ding, J., & Wang, Z. (2020). Entity Profiling in Knowledge Graphs. IEEE Access, 8, 27257–27266. https://doi.org/10.1109/ACCESS.2020.2971567
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