Bayes-SWRL: SWRL的概率推广

Yu Liu, Shihong Chen, Shuoming Li, Yunhua Wang
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引用次数: 3

摘要

为了解决一些现实问题,语义网的不确定性推理得到了广泛的研究,但许多研究者倾向于将模糊理论与描述逻辑程序(DLP)和语义网规则语言(SWRL)相结合。由于概率论比模糊逻辑更适合从部分知识的状态对事件进行预测,本文引入了SWRL的一种概率扩展,即Bayes-SWRL。基于贝叶斯- swrl定义的语法和模型语义,提出了一种概率推理算法,用于实现贝叶斯- swrl的原型推理器。此外,我们指出了贝叶斯- swrl的一些约束,用户应该注意。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bayes-SWRL: A Probabilistic Extension of SWRL
In order to deal with some real-world problems, the uncertainty reasoning for Semantic Web has been widely studied, though lots of researchers tend to combine fuzzy theory with Description Logic Programs (DLP) and Semantic Web Rule Language (SWRL). Since probability theory is more suitable than fuzzy logic to make prediction about event from a state of partial knowledge, a probabilistic extension of SWRL, named Bayes-SWRL, is introduced in this paper. Based on the syntax and model-theoretic semantic defined for Bayes-SWRL, we propose a probabilistic reasoning algorithm, which is employed to implement the prototype reasoner of Bayes-SWRL. In addition, we point out some constrains of Bayes-SWRL that users should pay attention to.
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