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ONTOLOGY MAPPING: TOWARDS SEMANTIC INTEROPERABILITY IN DISTRIBUTED AND HETEROGENEOUS ENVIRONMENTS

机译:本体映射:面向分布式和异构环境中的语义互操作性

摘要

The World Wide Web (WWW) now is widely used as a universal medium for information exchange. Semantic interoperability among different information systems in the WWW is limited due to information heterogeneity, and the non semantic nature of HTML and URLs. Ontologies have been suggested as a way to solve the problem of information heterogeneity by providing formal, explicit definitions of data and reasoning ability over related concepts. Given that no universal ontology exists for the WWW, work has focused on finding semantic correspondences between similar elements of different ontologies, i.e., ontology mapping. Ontology mapping can be done either by hand or using automated tools. Manual mapping becomes impractical as the size and complexity of ontologies increases. Full or semi-automated mapping approaches have been examined by several research studies. Previous full or semi-automated mapping approaches include analyzing linguistic information of elements in ontologies, treating ontologies as structural graphs, applying heuristic rules and machine learning techniques, and using probabilistic and reasoning methods etc. In this paper, two generic ontology mapping approaches are proposed. One is the PRIOR+ approach, which utilizes both information retrieval and artificial intelligence techniques in the context of ontology mapping. The other is the non-instance learning based approach, which experimentally explores machine learning algorithms to solve ontology mapping problem without requesting any instance. The results of the PRIOR+ on different tests at OAEI ontology matching campaign 2007 are encouraging. The non-instance learning based approach has shown potential for solving ontology mapping problem on OAEI benchmark tests.
机译:万维网(WWW)现在被广泛用作信息交换的通用介质。由于信息异质性以及HTML和URL的非语义性质,WWW中不同信息系统之间的语义互操作性受到限制。已经提出了本体作为通过提供正式的,明确的数据定义和对相关概念的推理能力来解决信息异质性问题的一种方法。鉴于WWW不存在通用本体,因此工作集中在寻找不同本体的相似元素之间的语义对应,即本体映射。本体映射可以手动完成,也可以使用自动化工具完成。随着本体的规模和复杂性的增加,手动映射变得不切实际。几项研究已经研究了全自动或半自动测绘方法。先前的全自动化或半自动化映射方法包括分析本体中元素的语言信息,将本体视为结构图,应用启发式规则和机器学习技术以及使用概率和推理方法等。本文提出了两种通用的本体映射方法。一种是PRIOR +方法,它在本体映射的上下文中同时利用了信息检索和人工智能技术。另一种是基于非实例学习的方法,该方法实验性地探索了机器学习算法,无需任何实例即可解决本体映射问题。 PRIOR +在OAEI本体匹配活动2007中进行的不同测试的结果令人鼓舞。基于非实例学习的方法显示了解决OAEI基准测试中的本体映射问题的潜力。

著录项

  • 作者

    Mao Ming;

  • 作者单位
  • 年度 2008
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  • 原文格式 PDF
  • 正文语种 en
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