一个统一的本体合并和充实框架

Mohammed Maree, S. Alhashmi, M. Belkhatir
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引用次数: 2

摘要

随着异构领域特定本体的不断发展,处理这些本体之间的语义和结构差异变得更加重要。此外,还需要不断地维护和更新,以便能够及时地为它们添加新的概念和实例。本文提出了一种用于本体合并和丰富的统计/语义耦合框架。首先,根据本体合并技术的重要性和可执行性,将它们分别划分为基于语义、基于名称和基于统计的技术。此外,我们还利用多个知识库来支持合并任务。其次,利用Web文本中编码的海量信息作为语料库,丰富合并本体。该框架的实验实例以及与最先进的基于句法和语义的合并和充实系统的比较验证了我们的建议。
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A Unified Ontology Merging and Enrichment Framework
With the growing development of heterogeneous domain-specific ontologies, the treatment of the semantic and structural differences between such ontologies becomes more important. In addition, constant maintenance and update is required so that they can be promptly enriched with new concepts and instances. In this paper, we present a coupled statistical/semantic framework for ontology merging and enrichment. First, we prioritize the ontology merging techniques according to their significance and execution into semantic-based, name-based, and statistical-based techniques respectively. In addition, we exploit multiple knowledge bases to support the merging task. Second, we use the massive amount of information encoded in texts on the Web as a corpus to enrich the merged ontology. An experimental instantiation of the framework and comparisons with state-of-the-art syntactic and semantic-based merging and enrichment systems validate our proposal.
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