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Detectability Thresholds and Optimal Algorithms for Community Structure in Dynamic Networks

机译:动态网络中社区结构的可检测阈值和最优算法

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The detection of communities within a dynamic network is a common means for obtaining a coarse-grained view of a complex system and for investigating its underlying processes. While a number of methods have been proposed in the machine learning and physics literature, we lack a theoretical analysis of their strengths and weaknesses, or of the ultimate limits on when communities can be detected. Here, we study the fundamental limits of detecting community structure in dynamic networks. Specifically, we analyze the limits of detectability for a dynamic stochastic block model where nodes change their community memberships over time, but where edges are generated independently at each time step. Using the cavity method, we derive a precise detectability threshold as a function of the rate of change and the strength of the communities. Below this sharp threshold, we claim that no efficient algorithm can identify the communities better than chance. We then give two algorithms that are optimal in the sense that they succeed all the way down to this threshold. The first uses belief propagation, which gives asymptotically optimal accuracy, and the second is a fast spectral clustering algorithm, based on linearizing the belief propagation equations. These results extend our understanding of the limits of community detection in an important direction, and introduce new mathematical tools for similar extensions to networks with other types of auxiliary information.
机译:动态网络内的社区检测是用于获得复杂系统的粗粒度视图的常用装置,并用于研究其基础过程。虽然在机器学习和物理文献中提出了许多方法,但我们缺乏对其优势和缺点的理论分析,或者当可以检测到社区时的最终限制。在这里,我们研究了在动态网络中检测社区结构的基本限制。具体地,我们分析了动态随机块模型的可检测性的限制,其中节点随时间改变其社区成员资格,但是在每次步骤中独立地生成边缘。使用腔方法,我们得出精确的可检测性阈值作为函数的变化率和社区的强度。低于这种尖锐的阈值,我们声称没有高效的算法可以比机会更好地识别社区。然后,我们给出了两个算法,这是一个最佳的意义上,它们一直成功到此阈值。首先使用信仰传播,这给出了渐近最佳精度,第二是基于线性化传播方程的线性化的快速谱聚类算法。这些结果在重要方向上扩展了对社区检测的极限的理解,并引入了与其他类型的辅助信息的网络类似扩展的新数学工具。

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