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Classification Analysis in Complex Online Social Networks Using Semantic Web Technologies

机译:使用语义网络技术复杂的在线社交网络分类分析

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The Semantic Web enables people and computers to interact and exchange information. Based on Semantic Web technologies, different machine learning applications have been designed. Particularly important is the possibility to create complex metadata descriptions for any problem domain, based on pre-defined ontologies. In this paper we evaluate the use of a semantic similarity measure based on pre-defined ontologies as an input for a classification analysis in the context of social network analysis. A link prediction between actors of two real world social networks is performed, which could serve as a recommendation system. The social networks involve different types of relations and nodes. We measure the prediction performance based on a semantic similarity measure as well as traditional approaches. The findings demonstrate that the prediction accuracy based on the semantic similarity is comparable to traditional approaches and shows that data mining on complex social networks using ontology-based metadata can be considered as a very promising approach.
机译:语义Web使人员和计算机能够交互和交换信息。基于语义Web技术,设计了不同的机器学习应用。特别重要的是基于预定义的本体,可以为任何问题域创建复杂元数据描述。在本文中,我们评估了基于预定定义的本体的语义相似度量的使用作为社交网络分析背景下的分类分析的输入。执行两个现实世界社交网络的参与者之间的链路预测,其可以作为推荐系统。社交网络涉及不同类型的关系和节点。我们基于语义相似度量以及传统方法来测量预测性能。该研究结果表明,基于语义相似性的预测精度与传统方法相当,并且表明使用基于本体的元数据的复杂社交网络上的数据挖掘可以被视为非常有希望的方法。

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