基于本体的信息集成异常数据检测

Yang Yu, J. Heflin
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引用次数: 7

摘要

为了更好地支持不同质量的语义Web数据的信息集成,本文提出了一种检测反映某种错误的三元组的方法。特别是,由于原始数据源中的事实错误、原始数据源对本体的误用或集成过程中的错误,可能会出现错误的三元组。虽然诊断这样的错误是一个困难的问题,但我们提出,三组偏离相似三组的程度可以作为识别错误的重要启发式。我们通过从参考数据中学习概率规则来检测这种“异常三元组”,并检查这些规则在多大程度上与三元组一致。该系统由两个组件组成,用于语义Web语句可能具有的两种类型的异常关系描述(无论是偶然的还是恶意的):语句可能关联两个不太可能有任何共同点的资源,或者可能使用不适当的谓词来描述两个资源之间的关系。采用分类技术学习统计特征,检测可疑资源对,即语句中主客体之间不存在显著关系。对于谓语的可疑用法,系统从主语/宾语对之间的间接语义连接中学习每个谓语的语义模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting abnormal data for ontology based information integration
To better support information integration on Semantic Web data with varying degrees of quality, this paper proposes an approach to detect triples which reflect some sort of error. In particular, erroneous triples may occur due to factual errors in the original data source, misuse of the ontology by the original data source, or errors in the integration process. Although diagnosing such errors is a difficult problem, we propose that the degree to which a triple deviates from similar triples can be an important heuristic for identifying errors. We detect such “abnormal triples” by learning probabilistic rules from the reference data and checking to what extent these rules agree with the triples. The system consists of two components for two types of abnormal relational descriptions that a Semantic Web statement could have, whether accidentally or maliciously: a statement could relate two resources that are unlikely to have anything in common or an inappropriate predicate could be used to describe the relation between the two resources. The classification technique is adopted to learn statistical characteristics for detecting a suspect resource pair, i.e. there is no significant relation between the subject and the object in the statement. For the suspect usages of a predicate, the system learns semantic patterns for each predicate from indirect semantic connections between the subject / object pairs.
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