The mainstream approach to the development of ontologies is merging ontologies encoding different information, where one of the major difficulties is that the heterogeneity motivates the ontology merging but also limits high-quality merging performance. Thus, the entity type (etype) recognition task is proposed to deal with such heterogeneity, aiming to infer the class of entities and etypes by exploiting the information encoded in ontologies. In this paper, we introduce a property-based approach that allows recognizing etypes on the basis of the properties used to define them. From an epistemological point of view, it is in fact properties that characterize entities and etypes, and this definition is independent of the specific labels and hierarchical schemas used to define them. The main contribution consists of a set of property-based metrics for measuring the contextual similarity between etypes and entities, and a machine learning-based etype recognition algorithm exploiting the proposed similarity metrics. Compared with the state-of-the-art, the experimental results show the validity of the similarity metrics and the superiority of the proposed etype recognition algorithm.
翻译:本文提出了一种基于属性的方法,通过利用本体中编码的信息,识别实体类型(etype),以应对本体合并中不同信息的异构性所带来的困难。从认知学的角度看,实体和etype的特征是由属性来实现的,而这个定义是独立于用于定义它们的特定标签和层次模式的。主要贡献包括一组基于属性的度量方法,用于衡量etype和实体之间的上下文相似性,以及利用所提出的相似性度量的机器学习型etype识别算法。实验结果表明,与现有技术相比,该文所提出的相似度度量的有效性以及etype识别算法的卓越性得到了证实。