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Structural Link Analysis and Prediction in Microblogs

机译:微博的结构链接分析与预测

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With hundreds of millions of participants, social media services have become commonplace. Unlike a traditional social network service, a microblogging network like Twitter is a hybrid network, combining aspects of both social networks and information networks. Understanding the structure of such hybrid networks and predicting new links are important for many tasks such as friend recommendation, community detection, and modeling network growth. We note that the link prediction problem in a hybrid network is different from previously studied networks. Unlike the information networks and traditional online social networks, the structures in a hybrid network are more complicated and informative. We compare most popular and recent methods and principles for link prediction and recommendation. Finally we propose a novel structure-based personalized link prediction model and compare its predictive performance against many fundamental and popular link prediction methods on real-world data from the Twitter microblogging network. Our experiments on both static and dynamic data sets show that our methods noticeably outperform the state-of-the-art.
机译:社交媒体服务已有数亿名参与者,已成为普遍存在。与传统的社交网络服务不同,像Twitter这样的微博网络是混合网络,组合社交网络和信息网络的方面。了解这种混合网络的结构和预测新链接对于许多任务,例如朋友推荐,社区检测和建模网络增长是重要的。我们注意,混合网络中的链路预测问题与先前研究的网络不同。与信息网络和传统在线社交网络不同,混合网络中的结构更复杂和信息。我们比较最受欢迎和最近的链接预测和推荐方法和原则。最后,我们提出了一种基于新的基于结构的个性化链路预测模型,并比较了来自Twitter微博网络的真实数据上的许多基本和流行的链路预测方法的预测性能。我们对静态和动态数据集的实验表明,我们的方法明显优于最先进的。

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