Bayesian inference of a social graph with trace feasibility guarantees

Effrosyni Papanastasiou, A. Giovanidis
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引用次数: 1

Abstract

Network inference is the process of deciding what is the true unknown graph underlying a set of interactions between nodes. There is a vast literature on the subject, but most known methods have an important drawback: the inferred graph is not guaranteed to explain every interaction from the input trace. We consider this an important issue since such inferred graph cannot be used as input for applications that require a reliable estimate of the true graph. On the other hand, a graph having trace feasibility guarantees can help us better understand the true (hidden) interactions that may have taken place between nodes of interest. The inference of such graph is the goal of this paper. Firstly, given an activity log from a social network, we introduce a set of constraints that take into consideration all the hidden paths that are possible between the nodes of the trace, given their timestamps of interaction. Then, we develop a nontrivial modification of the Expectation-Maximization algorithm by Newman [1], that we call Constrained-EM, which incorporates the constraints and a set of auxiliary variables into the inference process to guide it towards the feasibility of the trace. Experimental results on real-world data from Twitter confirm that Constrained-EM generates a posterior distribution of graphs that explains all the events observed in the trace while presenting the desired properties of a scale-free, small-world graph. Our method also outperforms established methods in terms of feasibility and quality of the inferred graph.
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具有迹可行性保证的社会图的贝叶斯推理
网络推理是在节点之间的一组交互下决定什么是真正的未知图的过程。关于这个主题有大量的文献,但是大多数已知的方法都有一个重要的缺点:推断的图不能保证解释来自输入跟踪的每个交互。我们认为这是一个重要的问题,因为这种推断图不能用作需要对真实图进行可靠估计的应用程序的输入。另一方面,具有跟踪可行性保证的图可以帮助我们更好地理解感兴趣的节点之间可能发生的真实(隐藏的)交互。这类图的推理是本文的目的。首先,给定来自社交网络的活动日志,我们引入了一组约束,这些约束考虑了轨迹节点之间可能存在的所有隐藏路径,给定了它们的交互时间戳。然后,我们开发了Newman[1]的期望最大化算法的非平凡修改,我们称之为Constrained-EM,它将约束和一组辅助变量纳入推理过程,以指导其走向跟踪的可行性。来自Twitter的真实世界数据的实验结果证实,Constrained-EM生成的图的后验分布解释了在跟踪中观察到的所有事件,同时呈现出无标度小世界图的期望属性。我们的方法在推断图的可行性和质量方面也优于现有的方法。
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