Ontology heterogeneity is the primary obstacle for interoperation of ontologies. Ontology mapping is the best way to solve this problem. The key of ontology mapping is the similarity computation. At present, the metho...Ontology heterogeneity is the primary obstacle for interoperation of ontologies. Ontology mapping is the best way to solve this problem. The key of ontology mapping is the similarity computation. At present, the method of similarity computation is imperfect. And the computation quantity is high. To solve these problems, an ontology-mapping framework with a kind of hybrid architecture is put forward, with an improvement in the method of similarity computation. Different areas have different local ontologies. Two ontologies are taken as examples, to explain the specific mapping framework and improved method of similarity computation. These two ontologies are about classes and teachers in a university. The experimental results show that using this framework and improved method can increase the accuracy of computation to a certain extent. Otherwise, the quantity of computation can be decreased.展开更多
O n to logy映射是实现异构O n to logy互操作的有效方法,目前的O n to logy映射主要采用句法方法,而很少采用语义方法。本文提出了一种基于语义的O n to logy映射方法,该方法考虑了O n to logy中的概念属性,采用概念名称相似性、概念...O n to logy映射是实现异构O n to logy互操作的有效方法,目前的O n to logy映射主要采用句法方法,而很少采用语义方法。本文提出了一种基于语义的O n to logy映射方法,该方法考虑了O n to logy中的概念属性,采用概念名称相似性、概念属性集合相似性、相关概念集合相似性等确定O n to logy之间的语义映射关系;采用语义半径提高了语义映射方法的灵活性。试验分析表明:该方法得到的映射的准确率和查全率在90%以上,准确率和查全率均优于S-M atch方法。该方法已在基于知识需求的主动式知识系统原型中实现,并在某研究所得到了应用。展开更多
基金the National Natural Science Foundation of China (70371052).
文摘Ontology heterogeneity is the primary obstacle for interoperation of ontologies. Ontology mapping is the best way to solve this problem. The key of ontology mapping is the similarity computation. At present, the method of similarity computation is imperfect. And the computation quantity is high. To solve these problems, an ontology-mapping framework with a kind of hybrid architecture is put forward, with an improvement in the method of similarity computation. Different areas have different local ontologies. Two ontologies are taken as examples, to explain the specific mapping framework and improved method of similarity computation. These two ontologies are about classes and teachers in a university. The experimental results show that using this framework and improved method can increase the accuracy of computation to a certain extent. Otherwise, the quantity of computation can be decreased.
文摘O n to logy映射是实现异构O n to logy互操作的有效方法,目前的O n to logy映射主要采用句法方法,而很少采用语义方法。本文提出了一种基于语义的O n to logy映射方法,该方法考虑了O n to logy中的概念属性,采用概念名称相似性、概念属性集合相似性、相关概念集合相似性等确定O n to logy之间的语义映射关系;采用语义半径提高了语义映射方法的灵活性。试验分析表明:该方法得到的映射的准确率和查全率在90%以上,准确率和查全率均优于S-M atch方法。该方法已在基于知识需求的主动式知识系统原型中实现,并在某研究所得到了应用。