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Using Machine Learning for Determining Network Robustness of Multi-Agent Systems Under Attacks

机译:使用机器学习来确定攻击下多智能体系的网络鲁棒性

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Network robustness has been the key metric in the analysis of secure distributed consensus algorithms for multi-agent systems (MASs). However, it is proved that determining the network robustness of a MASs with large nodes is NP-hard. In this paper, we try to apply machine learning method to determine the robustness of MASs. We use neural network (NN) that consists of Multilayer Perceptions (MLPs) to learn the representation of multi-agent networks and use softmax as our classifiers. We compare our method with a traditional CNN-based approach on a graph-structured dataset. It is shown that with the help of machine learning method, determining robustness can be possible for MASs with large nodes.
机译:网络稳健性一直是分析多智能体系(质量)的安全分布式共识算法的关键指标。然而,证明了确定具有大节点的质量的网络稳健性是NP - 硬。在本文中,我们尝试应用机器学习方法来确定质量的稳健性。我们使用由多层看法(MLP)组成的神经网络(NN)来学习多代理网络的表示,并使用SoftMax作为我们的分类器。我们将我们的方法与传统的基于CNN的方法进行比较,在图形结构化数据集上。结果表明,在机器学习方法的帮助下,可以使用大节点的质量来确定鲁棒性。

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