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基于分类的网络连通性鲁棒性预测。

Classification-based prediction of network connectivity robustness.

作者信息

Lou Yang, Wu Ruizi, Li Junli, Wang Lin, Tang Chang-Bing, Chen Guanrong

机构信息

College of Computer Science, Sichuan Normal University, Chengdu, 610066, China; Key Laboratory of System Control and Information Processing, Ministry of Education of China, Shanghai, 200240, China.

College of Computer Science, Sichuan Normal University, Chengdu, 610066, China.

出版信息

Neural Netw. 2023 Jan;157:136-146. doi: 10.1016/j.neunet.2022.10.013. Epub 2022 Oct 20.

Abstract

Today, there is an increasing concern about malicious attacks on various networks in society and industry, against which the network robustness is critical. Network connectivity robustness, in particular, is of fundamental importance, which is generally measured by a sequence of calculated values that indicate the connectedness of the remaining network after a sequence of attacks by means of node- or edge-removal. It is computationally time-consuming, however, to measure and evaluate the network connectivity robustness using the conventional attack simulations, especially for large-scale networked systems. In the present paper, an efficient robustness predictor based on multiple convolutional neural networks (mCNN-RP) is proposed for predicting the network connectivity robustness, which is an natural extension of the single CNN-based predictor. In mCNN-RP, one CNN works as the classifier, while each of the rest CNNs works as an estimator for predicting the connectivity robustness of every classified network category. The network categories are classified according to the available prior knowledge. A data-based filter is installed for predictive data refinement. Extensive experimental studies on both synthetic and real-world networks, including directed and undirected as well as weighted and unweighted topologies, verify the effectiveness of mCNN-RP. The results demonstrate that the average prediction error is lower than the standard deviation of the tested data, which outperforms the single CNN-based framework. The runtime in assessing network connectivity robustness is significantly reduced by using the CNN-based technique. The proposed mCNN-RP not only can accurately predict the connectivity robustness of various complex networks, but also provides an excellent indicator for the connectivity robustness, better than other existing prediction measures.

摘要

如今,社会和行业中对各种网络的恶意攻击日益受到关注,对此网络鲁棒性至关重要。尤其是网络连通性鲁棒性具有根本重要性,它通常通过一系列计算值来衡量,这些值表示在通过节点或边移除进行一系列攻击后剩余网络的连通性。然而,使用传统攻击模拟来测量和评估网络连通性鲁棒性在计算上非常耗时,特别是对于大规模网络系统。在本文中,提出了一种基于多卷积神经网络的高效鲁棒性预测器(mCNN - RP)来预测网络连通性鲁棒性,它是基于单个卷积神经网络的预测器的自然扩展。在mCNN - RP中,一个卷积神经网络用作分类器,而其余每个卷积神经网络用作估计器,用于预测每个分类网络类别的连通性鲁棒性。网络类别根据可用的先验知识进行分类。安装了一个基于数据的滤波器用于预测数据细化。对合成网络和真实网络进行的广泛实验研究,包括有向和无向以及加权和无加权拓扑结构,验证了mCNN - RP的有效性。结果表明,平均预测误差低于测试数据的标准差,这优于基于单个卷积神经网络的框架。使用基于卷积神经网络的技术显著降低了评估网络连通性鲁棒性的运行时间。所提出的mCNN - RP不仅可以准确预测各种复杂网络的连通性鲁棒性,而且还为连通性鲁棒性提供了一个比其他现有预测措施更好的优秀指标。

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