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Sequential Changepoint Approach for Online Community Detection

机译:在线社区检测的顺序变更点方法

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摘要

We present new algorithms for detecting the emergence of a community in large networks from sequential observations. The networks are modeled using Erdős-Renyi random graphs with edges forming between nodes in the community with higher probability. Based on statistical changepoint detection methodology, we develop three algorithms: the Exhaustive Search (ES), the Mixture, and the Hierarchical Mixture (H-Mix) methods. Performance of these methods is evaluated by the average run length (ARL), which captures the frequency of false alarms, and the detection delay. Numerical comparisons show that the ES method performs the best; however, it is exponentially complex. The Mixture method is polynomially complex by exploiting the fact that the size of the community is typically small in a large network. However, it may react to a group of active edges that do not form a community. This issue is resolved by the H-Mix method, which is based on a dendrogram decomposition of the network. We present an asymptotic analytical expression for ARL of the Mixture method when the threshold is large.
机译:我们提出了用于从顺序观察中检测大型网络中社区出现的新算法。使用Erdős-Renyi随机图对网络进行建模,边缘在社区中的节点之间形成的可能性更高。基于统计变化点检测方法,我们开发了三种算法:穷举搜索(ES),混合和分层混合(H-Mix)方法。这些方法的性能通过平均运行时间(ARL)进行评估,该平均运行时间可捕获错误警报的频率以及检测延迟。数值比较表明,ES方法的效果最佳。但是,它是指数复杂的。利用社区的规模通常在大型网络中较小的事实,Mixture方法在多项式上很复杂。但是,它可能会对未形成社区的一组活动边缘做出反应。 H-Mix方法可解决此问题,该方法基于网络的树状图分解。当阈值较大时,我们提出了混合法ARL的渐近分析表达式。

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