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Connected Subgraph Detection with Mirror Descent on SDPs

机译:SDP上具有镜像下降的连接子图检测

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We propose a novel, computationally efficient mirror-descent based optimization framework for subgraph detection in graph-structured data. Our aim is to discover anomalous patterns present in a connected subgraph of a given graph. This problem arises in many applications such as detection of network intrusions, community detection, detection of anomalous events in surveillance videos or disease outbreaks. Since optimization over connected subgraphs is a combinatorial and computationally difficult problem, we propose a convex relaxation that offers a principled approach to incorporating connectivity and conductance constraints on candidate subgraphs. We develop a novel efficient algorithm to solve the relaxed problem, establish convergence guarantees and demonstrate its feasibility and performance with experiments on real and very large simulated networks.
机译:我们提出了一种新颖的,计算效率高的基于镜像下降的优化框架,用于图结构数据中的子图检测。我们的目的是发现给定图的连接子图中存在的异常模式。在许多应用中会出现此问题,例如检测网络入侵,社区检测,检测监视视频中的异常事件或疾病爆发。由于对连接的子图进行优化是一个组合和计算上的难题,因此我们提出了凸松弛法,它提供了一种原则上的方法来将连通性和电导约束纳入候选子图。我们开发了一种新颖的高效算法来解决松弛问题,建立收敛性保证并通过在真实和超大型仿真网络上的实验来证明其可行性和性能。

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