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预测网络可控稳健性:卷积神经网络方法。

Predicting Network Controllability Robustness: A Convolutional Neural Network Approach.

出版信息

IEEE Trans Cybern. 2022 May;52(5):4052-4063. doi: 10.1109/TCYB.2020.3013251. Epub 2022 May 19.

Abstract

Network controllability measures how well a networked system can be controlled to a target state, and its robustness reflects how well the system can maintain the controllability against malicious attacks by means of node removals or edge removals. The measure of network controllability is quantified by the number of external control inputs needed to recover or to retain the controllability after the occurrence of an unexpected attack. The measure of the network controllability robustness, on the other hand, is quantified by a sequence of values that record the remaining controllability of the network after a sequence of attacks. Traditionally, the controllability robustness is determined by attack simulations, which is computationally time consuming. In this article, a method to predict the controllability robustness based on machine learning using a convolutional neural network (CNN) is proposed, motivated by the observations that: 1) there is no clear correlation between the topological features and the controllability robustness of a general network; 2) the adjacency matrix of a network can be regarded as a grayscale image; and 3) the CNN technique has proved successful in image processing without human intervention. Under the new framework, a fairly large number of training data generated by simulations are used to train a CNN for predicting the controllability robustness according to the input network-adjacency matrices, without performing conventional attack simulations. Extensive experimental studies were carried out, which demonstrate that the proposed framework for predicting controllability robustness of different network configurations is accurate and reliable with very low overheads.

摘要

网络可控性衡量的是网络系统能够被控制到目标状态的程度,其鲁棒性反映了系统在遭受节点删除或边删除等恶意攻击时保持可控性的能力。网络可控性的度量是通过在发生意外攻击后恢复或保持可控性所需的外部控制输入数量来量化的。另一方面,网络可控性鲁棒性的度量是通过记录网络在一系列攻击后的剩余可控性的一系列值来量化的。传统上,可控性鲁棒性是通过攻击模拟来确定的,这在计算上是耗时的。本文提出了一种基于卷积神经网络 (CNN) 的机器学习方法来预测可控性鲁棒性,这是基于以下观察结果:1)一般网络的拓扑特征与可控性鲁棒性之间没有明显的相关性;2)网络的邻接矩阵可以看作是灰度图像;3)CNN 技术在无需人工干预的情况下已成功应用于图像处理。在新框架下,通过模拟生成大量训练数据,根据输入的网络邻接矩阵,使用 CNN 进行训练,以预测可控性鲁棒性,而无需进行常规的攻击模拟。进行了广泛的实验研究,结果表明,所提出的用于预测不同网络配置的可控性鲁棒性的框架具有准确性和可靠性,并且开销非常低。

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