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Similarity between community structures of different online social networks and its impact on underlying community detection

机译:不同在线社交网络的社区结构之间的相似性及其对底层社区检测的影响

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摘要

As social networking services are popular, many people may register in more than one online social network. In this paper we study a set of users who have accounts of three online social networks: namely Foursquare, Facebook and Twitter. Community structure of this set of users may be reflected in these three online social networks. Therefore, high correlation between these reflections and the underlying community structure may be observed. In this work, community structures are detected in all three online social networks. Also, we investigate the similarity level of community structures across different networks. It is found that they show strong correlation with each other. The similarity between different networks may be helpful to find a community structure close to the underlying one. To verify this, we propose a method to increase the weights of some connections in networks. With this method, new networks are generated to assist community detection. By doing this, value of modularity can be improved and the new community structure match network's natural structure better. In this paper we also show that the detected community structures of online social networks are correlated with users' locations which are identified on Foursquare. This information may also be useful for underlying community detection. (C) 2014 Elsevier B.V. All rights reserved.
机译:随着社交网络服务的普及,许多人可能会在一个以上的在线社交网络中注册。在本文中,我们研究了一组拥有三个在线社交网络帐户的用户:Foursquare,Facebook和Twitter。这组用户的社区结构可以反映在这三个在线社交网络中。因此,可以观察到这些反射与潜在的群落结构之间的高度相关性。在这项工作中,在所有三个在线社交网络中都检测到社区结构。此外,我们调查了不同网络中社区结构的相似度。发现它们之间显示出很强的相关性。不同网络之间的相似性可能有助于找到与基础网络接近的社区结构。为了验证这一点,我们提出了一种增加网络中某些连接权重的方法。使用这种方法,可以生成新的网络来帮助社区检测。通过这样做,可以提高模块化的价值,并且新的社区结构可以更好地匹配网络的自然结构。在本文中,我们还表明,检测到的在线社交网络社区结构与在Foursquare上标识的用户位置相关。此信息对于基础社区检测也可能有用。 (C)2014 Elsevier B.V.保留所有权利。

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