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FIND YOUR PLACE: SIMPLE DISTRIBUTED ALGORITHMS FOR COMMUNITY DETECTION

机译:找到您的位置:简单的分布式算法用于社区检测

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摘要

Given an underlying graph, we consider the following dynamics: Initially, each node locally chooses a value in {-1, 1}, uniformly at random and independently of other nodes. Then, in each consecutive round, every node updates its local value to the average of the values held by its neighbors, at the same time applying an elementary, local clustering rule that only depends on the current and the previous values held by the node. We prove that the process resulting from this dynamics produces a clustering that exactly or approximately (depending on the graph) reflects the underlying cut in logarithmic time, under various graph models that exhibit a sparse balanced cut, including the stochastic block model. We also prove that a natural extension of this dynamics performs community detection on a regularized version of the stochastic block model with multiple communities. Rather surprisingly, our results provide rigorous evidence for the ability of an extremely simple and natural dynamics to perform community detection, a computational problem which is nontrivial even in a centralized setting.
机译:给定底层图表,我们考虑以下动态:最初,每个节点在本地选择{-1,1}中的值,以随机均匀,独立于其他节点。然后,在每个连续回合中,每个节点将其本地值更新到其邻居所持的值的平均值,同时应用仅取决于节点所持的当前和先前值的基本群集规则。我们证明,由该动态产生的过程产生恰好或大致(根据图表)的聚类反映了对数时间的底层切割,在具有稀疏平衡切割的各种图形模型下,包括随机块模型。我们还证明了这种动态的自然延伸在具有多个社区的随机块模型的正则化版本上执行社区检测。令人惊讶的是,我们的结果提供了严格的证据,以实现一个极其简单和自然动态的能力,即使在集中设置中也是非竞争的计算问题。

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