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Discovering Nested Communities

机译:发现嵌套社区

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Finding communities in graphs is one of the most well-studied problems in data mining and social-network analysis. In many real applications, the underlying graph does not have a clear community structure. In those cases, selecting a single community turns out to be a fairly ill-posed problem, as the optimization criterion has to make a difficult choice between selecting a tight but small community or a more inclusive but sparser community. In order to avoid the problem of selecting only a single community we propose discovering a sequence of nested communities. More formally, given a graph and a starting set, our goal is to discover a sequence of communities all containing the starting set, and each community forming a denser subgraph than the next. Discovering an optimal sequence of communities is a complex optimization problem, and hence we divide it into two subproblems: 1) discover the optimal sequence for a fixed order of graph vertices, a subproblem that we can solve efficiently, and 2) find a good order. We employ a simple heuristic for discovering an order and we provide empirical and theoretical evidence that our order is good.
机译:在图形中找到社区是数据挖掘和社交网络分析中研究最深入的问题之一。在许多实际应用中,基础图没有清晰的社区结构。在这些情况下,选择单个社区实际上是一个问题,因为优化标准必须在选择一个紧密但规模较小的社区或一个更具包容性但较稀疏的社区之间做出艰难的选择。为了避免仅选择一个社区的问题,我们建议发现一系列嵌套社区。更正式地说,给定一个图和一个起始集,我们的目标是发现一系列均包含起始集的社区,每个社区形成一个比下一个更密集的子图。发现社区的最佳序列是一个复杂的优化问题,因此,我们将其分为两个子问题:1)发现图顶点固定顺序的最优序列,这是我们可以有效解决的子问题,以及2)找到一个好的顺序。我们采用一种简单的启发式方法来发现订单,并提供经验和理论证据表明我们的订单良好。

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