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Multigraph Sampling of Online Social Networks

机译:在线社交网络的多图抽样

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摘要

State-of-the-art techniques for probability sampling of users of online social networks (OSNs) are based on random walks on a single social relation (typically friendship). While powerful, these methods rely on the social graph being fully connected. Furthermore, the mixing time of the sampling process strongly depends on the characteristics of this graph. In this paper, we observe that there often exist other relations between OSN users, such as membership in the same group or participation in the same event. We propose to exploit the graphs these relations induce, by performing a random walk on their union multigraph. We design a computationally efficient way to perform multigraph sampling by randomly selecting the graph on which to walk at each iteration. We demonstrate the benefits of our approach through (i) simulation in synthetic graphs, and (ii) measurements of Last.fm- an Internet website for music with social networking features. More specifically, we show that multigraph sampling can obtain a representative sample and faster convergence, even when the individual graphs fail, i.e., are disconnected or highly clustered.
机译:在线社交网络(OSN)用户的概率采样的最新技术基于对单个社交关系(通常是友谊)的随机游动。这些方法虽然功能强大,但它们依赖于社交图完全连接。此外,采样过程的混合时间在很大程度上取决于该图的特性。在本文中,我们观察到OSN用户之间通常还存在其他关系,例如同一组中的成员身份或同一事件中的参与。我们建议通过对它们的联合多图执行随机游走来利用这些关系所诱导的图。通过随机选择每次迭代在其上行走的图形,我们设计了一种计算有效的方法来执行多图采样。我们通过(i)在合成图中进行模拟,以及(ii)测量Last.fm(具有社交网络功能的音乐互联网网站)来证明我们的方法的好处。更具体地说,我们表明,即使当单个图失败(即,断开连接或高度聚类)时,多图采样也可以获得代表性的样本并且收敛速度更快。

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