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Multiscale Evolutionary Perturbation Attack on Community Detection

机译:多尺度进化扰动攻击社区检测

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摘要

Community detection, aiming to group nodes based on their connections, plays an important role in network analysis since communities, treated as meta-nodes, allow us to create a large-scale map of a network to simplify its analysis. However, for privacy reasons, we may want to prevent communities from being discovered in certain cases, leading to the topics on community deception. In this article, we formalize this community detection attack problem in three scales, including global attack (macroscale), target community attack (mesoscale), and target node attack (microscale). We treat this as an optimization problem and further propose a novel evolutionary perturbation attack (EPA) method, where we generate adversarial networks to realize the community detection attack. Numerical experiments validate that our EPA can successfully attack network community algorithms in all three scales, i.e., hide target nodes or communities and further disturb the community structure of the whole network by only changing a small fraction of links. By comparison, our EPA behaves better than a number of baseline attack methods on six synthetic networks and three real-world networks. More interestingly, although our EPA is based on the Louvain algorithm, it is also effective in attacking other community detection algorithms, validating its good transferability.
机译:社区检测,针对基于其连接的组群体,在网络分析中发挥着重要作用,因为社区被视为元节点,允许我们创建网络的大规模地图,以简化其分析。但是,由于隐私原因,我们可能希望在某些情况下防止社区发现,导致社区欺骗的主题。在本文中,我们将该社区检测攻击问题正式,包括全局攻击(Macroscale),目标社区攻击(Messcale)和目标节点攻击(Microscale)。我们将其视为优化问题,进一步提出了一种新颖的进化扰动攻击(EPA)方法,在那里我们产生对抗网络来实现社区检测攻击。数值实验验证,我们的EPA可以在所有三个尺度中成功攻击网络社区算法,即隐藏目标节点或社区,并通过仅改变一小部分链路来进一步打扰整个网络的社区结构。相比之下,我们的EPA在六个合成网络和三个真实网络上的许多基线攻击方法表现得好。更有趣的是,虽然我们的EPA基于Louvain算法,但在攻击其他社区检测算法中也是有效的,验证其良好的可转移性。

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