社交网络混搭:用于统计学习的基于本体的社交网络集成

Chunying Zhou, Huajun Chen, Tong Yu
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引用次数: 10

摘要

在线社交网站的激增导致了在不同应用领域捕获社交网络的大量真实数据的积累。然而,社交网络之间往往是相互分离的,造成了数据孤岛现象,这就阻碍了复杂数据分析的实现,而复杂数据分析需要存储在多个社交网络中的综合数据。在本文中,我们提出了一种社交网络混搭方法,该方法使用语义Web技术来集成包含更丰富语义的异构社交网络。其次,我们提出了一种统计学习方法,从社交网络的语义结构中学习概率语义模型(PSM)。该框架可以在不丢失语义的情况下利用这些累积和集成的数据。最后,我们的方法通过结合LinkedIn和DBLP来预测协作同事关系的实际应用程序进行评估。
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Social network mashup: Ontology-based social network integration for statistic learning
The proliferation of online social websites results in the accumulation of a large volume of real-world data capturing social networks in diversified application domains. However, social networks are always separated with each other that causes the data isolated island phenomenon, which becomes impedance to implementing complex data analysis that requires comprehensive data stored in several social networks. In this paper, we present a social network mashup approach that uses the Semantic Web technology to integrate heterogeneous social networks that contain richer semantics. Secondly, we propose a statistic learning approach that learns a Probabilistic Semantic Model (PSM) from semantic structures of social networks. This framework can utilize these accumulated and integrated data without losing semantics. Lastly, our approach is evaluated by a real-life application that combines LinkedIn and DBLP to predict collaborative colleague relation.
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