Abstract
This article presents and evaluates a method for the detection of DBpedia types and entities that can be used for knowledge base completion and maintenance. This method compares entity embeddings with traditional N-gram models coupled with clustering and classification. We tackle two challenges: (a) the detection of entity types, which can be used to detect invalid DBpedia types and assign DBpedia types for type-less entities; and (b) the detection of invalid entities in the resource description of a DBpedia entity. Our results show that entity embeddings outperform n-gram models for type and entity detection and can contribute to the improvement of DBpedia's quality, maintenance, and evolution.
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CITATION STYLE
Zhou, H., Zouaq, A., & Inkpen, D. (2018). A comparison of word embeddings and N-gram Models for DBpedia type and invalid entity detection. Information (Switzerland), 10(1). https://doi.org/10.3390/info10010006
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