语义Web上基于多主体信任的信念组合

M. Nagy, M. Vargas-Vera, E. Motta
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引用次数: 4

摘要

评估语义Web上概念之间相似性的软件代理必须处理对评估的相似性的信念变得矛盾的场景。这些相互矛盾的信念的组合很容易导致映射精度和召回率下降,从而导致任何本体映射算法的性能都很差。通常,使用不同相似度并将它们组合成更可靠和连贯的视图的映射算法,在不同来源之间的这些矛盾没有得到有效管理时,很容易变得不可靠。在本文中,我们提出了一种基于模糊投票模型的解决方案,通过在软件代理之间引入信任和投票来解决评估相似度中的矛盾信念。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi agent trust for belief combination on the Semantic Web
Software agents that assess similarities between concepts on the semantic Web has to deal with scenarios where the beliefs in the assessed similarities becomes contradicting. The combination of these contradicting beliefs can easily worsen the mapping precision and recall, which leads to poor performance of any ontology mapping algorithm. Typically mapping algorithms, which use different similarities and combine them into a more reliable and coherent view can easily become unreliable when these contradictions are not managed effectively between the different sources. In this paper we propose a solution based on the fuzzy voting model for managing such situations by introducing trust and voting between software agents that resolve contradicting beliefs in the assessed similarities.
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