复杂的社会网络分区,实现均衡的子网

H. Zhang, Jiming Liu, Chunyu Feng, C. Pang, Tongliang Li, Jing He
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引用次数: 4

摘要

复杂社会网络分析方法已广泛应用于在线社交媒体、生物复杂网络等领域。复杂的社交网络正面临着信息过载的挑战。近年来,人们对高效复杂网络分析方法的需求不断上升,尤其是在线社交应用程序(如Flickr、Facebook和LinkedIn)的广泛使用。本文旨在通过将一个大的复杂网络划分为一组较不复杂的网络来简化网络的复杂性。现有的社会网络分析方法主要基于复杂网络理论和数据挖掘技术。这些方法在处理超大型社交网络数据集时面临着挑战。特别是,保持分区子网的统计特征的难度急剧增加。所提出的基于正态分布(ND)的方法可以在原始复杂网络的基础上平衡划分的子网络的分布。因此,每个子网的度分布可以与原网络相似。这对于分析细分网络是非常有益的,并且有可能降低动态在线社会环境中的复杂性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Complex social network partition for balanced subnetworks
Complex social network analysis methods have been applied extensively in various domains including online social media, biological complex networks, etc. Complex social networks are facing the challenge of information overload. The demands for efficient complex network analysis methods have been rising in recent years, particularly the extensive use of online social applications, such as Flickr, Facebook and LinkedIn. This paper aims to simplify the network complexity through partitioning a large complex network into a set of less complex networks. Existing social network analysis methods are mainly based on complex network theory and data mining techniques. These methods are facing the challenges while dealing with extreme large social network data sets. Particularly, the difficulties of maintaining the statistical characteristics of partitioned sub-networks have been increasing dramatically. The proposed Normal Distribution (ND) based method can balance the distribution of the partitioned sub-networks according to the original complex network. Therefore, each subnetwork can have its degree distribution similar to that of the original network. This can be very beneficial for analyzing sub-divided networks and potentially reducing the complexity in dynamic online social environment.
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