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Addressing semantic heterogeneity through multiple knowledge base assisted merging of domain-specific ontologies

机译:通过多个知识库协助解决特定领域本体的语义异质性

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With the development of the Semantic Web (SW), the creation of ontologies to formally conceptualize our understanding of various domains has widely increased in number. However, the conceptual and terminological differences (a.k.a semantic heterogeneity problem) between ontologies form a major limiting factor towards their use/reuse and full adoption in practical settings. A key solution to addressing this problem can be through identifying semantic correspondences between the entities (including concepts, relations, and instances) of heterogeneous ontologies, and consequently achieving interoperability between them. This process is also known as ontology alignment. The output of this process can be further exploited to merge ontologies into a single coherent ontology. Indeed, this is widely regarded as a crucial, yet difficult task, specifically when dealing with heavyweight ontologies that consist of hundreds of thousands of concepts. To address this issue, various ontology merging approaches have been proposed. These approaches can be classified into three categories: single-strategy-based approaches, multiple-strategy-based approaches, and approaches based on exploiting external semantic resources. In this paper, we first discuss the strengths and limitations of each of these approaches, and then present our framework for addressing the semantic heterogeneity problem through merging domain-specific ontologies based on multiple external semantic resources. The novelty of the proposed approach is mainly based on employing knowledge represented by multiple external resources (knowledge bases in our work) to make aggregated decisions on the semantic correspondences between the entities of heterogeneous ontologies. Other important issues that we attempt to tackle in the proposed framework are: (ⅰ) Identifying and handling inconsistency of semantic relations between the ontology concepts and, (ⅱ) Handling the issue of missing background knowledge (such as concepts and instances) in the exploited knowledge bases by utilizing an integrated statistical and semantic technique. Additionally, the proposed solution soundly enriches the knowledge bases with missing background knowledge, and thus enables the reuse of the newly obtained knowledge in future ontology merging tasks. To validate our proposal, we tested the framework using the OAEI 2009 benchmark and compared the produced results with state-of-the-art syntactic and semantic based systems. In addition, we utilized the proposed techniques to merge three heavyweight ontologies from the environmental domain.
机译:随着语义网(SW)的发展,创建本体以正式概念化我们对各个领域的理解的数量已大大增加。但是,本体之间的概念和术语差异(也称为语义异质性问题)是对其进行使用/重用以及在实际环境中完全采用的主要限制因素。解决此问题的关键解决方案可以是通过识别异构本体的实体(包括概念,关系和实例)之间的语义对应关系,从而实现它们之间的互操作性。此过程也称为本体对齐。可以进一步利用此过程的输出,以将本体合并为单个一致的本体。确实,这被广泛认为是一项关键而又艰巨的任务,特别是在处理由数十万个概念组成的重量级本体时。为了解决这个问题,已经提出了各种本体合并方法。这些方法可以分为三类:基于单策略的方法,基于多策略的方法以及基于利用外部语义资源的方法。在本文中,我们首先讨论每种方法的优点和局限性,然后介绍通过合并基于多个外部语义资源的特定领域本体解决语义异构问题的框架。所提出的方法的新颖性主要是基于利用由多种外部资源(我们的工作中的知识基础)表示的知识来对异构本体之间的语义对应做出聚合决策。我们尝试在提出的框架中解决的其他重要问题是:(ⅰ)识别和处理本体概念之间语义关系的不一致,以及(ⅱ)处理被攻击对象中背景知识(例如概念和实例)缺失的问题利用集成的统计和语义技术建立知识库。另外,所提出的解决方案在缺少背景知识的情况下极大地丰富了知识库,从而使得在将来的本体合并任务中能够重新使用新获得的知识。为了验证我们的建议,我们使用OAEI 2009基准测试了该框架,并将产生的结果与最新的基于语法和语义的系统进行了比较。另外,我们利用提出的技术来合并来自环境领域的三种重量级本体。

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