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CrossSimON: A Novel Probabilistic Approach to Cross-Platform Online Social Network Simulation

机译:CrossSimON:跨平台在线社交网络仿真的一种新型概率方法

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The increasing popularity and diversity of online social networks (OSNs) have attracted more and more people to participate in multiple OSNs. Learning users' behavior and information diffusion across platforms is critical for cyber threat detection, but it is still a challenge due to the surge of users participating in multiple social platforms. Existing research on profile matching requires user identity information to be available, which may not be realistic. Little prior research payed attention to mapping behavioral patterns across platforms. We designed and implemented an efficient two-level probabilistic approach called CrossSimON to mapping user-group behavior across platforms. CrossSimON considers the activity level and network position at both individual user level and group level to correlate activities across social platforms. To evaluate the effectiveness of CrossSimON in modeling social activity across platforms, we conducted experiments on three online social platforms: GitHub, Reddit and Twitter. Our experimental results show that CrossSimON outperformed the Benchmark in 3 out of 5 simulation metrics. CrossSimON achieved better performance in user activity prediction. The research provides new strategy for cross-platform online social network simulation, and new findings on simulating OSNs and predictive analytics for understanding online social network behavior.
机译:在线社交网络(OSN)的日益普及和多样性吸引了越来越多的人参与多个OSN。了解用户的行为和跨平台的信息传播对于检测网络威胁至关重要,但是由于参与多个社交平台的用户激增,这仍然是一个挑战。现有的关于配置文件匹配的研究要求用户身份信息可用,这可能是不现实的。之前的研究很少关注跨平台的行为模式映射。我们设计并实现了一种称为CrossSimON的高效两级概率方法,以跨平台映射用户组行为。 CrossSimON会考虑单个用户级别和组级别的活动级别和网络位置,以关联跨社交平台的活动。为了评估CrossSimON在跨平台的社交活动建模中的有效性,我们在三个在线社交平台上进行了实验:GitHub,Reddit和Twitter。我们的实验结果表明,CrossSimON在5个模拟指标中有3个优于基准。 CrossSimON在用户活动预测方面取得了更好的性能。该研究为跨平台的在线社交网络仿真提供了新的策略,并为模拟OSN和预测分析提供了新的发现,以了解在线社交网络的行为。

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