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OWL2Vec*: embedding of OWL ontologies

机译:owl2vec *:嵌入猫头鹰本体

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摘要

Semantic embedding of knowledge graphs has been widely studied and used for prediction and statistical analysis tasks across various domains such as Natural Language Processing and the Semantic Web. However, less attention has been paid to developing robust methods for embedding OWL (Web Ontology Language) ontologies, which contain richer semantic information than plain knowledge graphs, and have been widely adopted in domains such as bioinformatics. In this paper, we propose a random walk and word embedding based ontology embedding method named OWL2Vec*, which encodes the semantics of an OWL ontology by taking into account its graph structure, lexical information and logical constructors. Our empirical evaluation with three real world datasets suggests that OWL2Vec* benefits from these three different aspects of an ontology in class membership prediction and class subsumption prediction tasks. Furthermore, OWL2Vec* often significantly outperforms the state-of-the-art methods in our experiments.
机译:知识图表的语义嵌入已被广泛研究,并用于各种域的预测和统计分析任务,例如自然语言处理和语义网络。但是,对开发嵌入猫头鹰(Web本体语言)本体的强大方法的注意力较少,这些方法包含比普通知识图表更丰富的语义信息,并且已被广泛采用在诸如生物信息学等域中。在本文中,我们提出了一个名为OWL2VEC *的随机步行和Word嵌入的本体嵌入方法,该方法通过考虑其图形结构,词汇信息和逻辑构造函数来编码猫头鹰本体学的语义。我们与三个真实世界数据集的实证评估表明,OWL2VEC *来自本体成员预测和类集中的本体的这三个不同方面的益处。此外,OWL2VEC *经常显着优于我们的实验中最先进的方法。

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