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Sampling online social networks by random walk with indirect jumps

机译:随机跳转在线社交网络,间接跳跃

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Random walk-based sampling methods are gaining popularity and importance in characterizing large networks. While powerful, they suffer from the slow mixing problem when the graph is loosely connected, which results in poor estimation accuracy. Random walk with jumps (RWwJ) can address the slow mixing problem but it is inapplicable if the graph does not support uniform vertex sampling (UNI). In this work, we develop methods that can efficiently sample a graph without the necessity of UNI but still enjoy the similar benefits as RWwJ. We observe that many graphs under study, called target graphs, do not exist in isolation. In many situations, a target graph is related to an auxiliary graph and a bipartite graph, and they together form a better connected two-layered network structure. This new viewpoint brings extra benefits to graph sampling: if directly sampling a target graph is difficult, we can sample it indirectly with the assistance of the other two graphs. We propose a series of new graph sampling techniques by exploiting such a two-layered network structure to estimate target graph characteristics. Experiments conducted on both synthetic and real-world networks demonstrate the effectiveness and usefulness of these new techniques.
机译:随机步行的采样方法在表征大型网络时获得了普及和重要性。在强大的同时,当图表松散地连接时,它们会遭受缓慢的混合问题,这导致估计精度差。随机散步与跳跃(rwwj)可以解决缓慢混合问题,但如果图表不支持统一的顶点采样(UNI),则可以不适用。在这项工作中,我们开发了可以有效地样本图形的方法,而无需UNI的必要性,但仍然享受与RWWJ类似的好处。我们观察到,在研究中的许多图表,称为目标图形,不存在隔离。在许多情况下,目标图表与辅助图和二分图相关,并且它们一起形成更好的连接的双层网络结构。这个新的视点为图表采样带来了额外的益处:如果困难的直接采样目标图,我们可以在其他两个图表的帮助下间接进行样本。我们通过利用这样的双层网络结构来提出一系列新的曲线图采样技术来估计目标图特征。在合成和现实世界网络上进行的实验证明了这些新技术的有效性和有用性。

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