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  5. SPP-CNN: An Efficient Framework for Network Robustness Prediction

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Article
English
2023

SPP-CNN: An Efficient Framework for Network Robustness Prediction

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English
2023
IEEE Transactions on Circuits and Systems I Regular Papers
Vol 70 (10)
DOI: 10.1109/tcsi.2023.3296602

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Guanrong Chen
Guanrong Chen

City University Of Hong Kong

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Chengpei Wu
Yang Lou
Lin Wang
+3 more

Abstract

This paper addresses the robustness of a network to sustain its connectivity and controllability against malicious attacks. This kind of network robustness is typically measured by the time-consuming attack simulation, which returns a sequence of values that record the remaining connectivity and controllability after a sequence of node- or edge-removal attacks. For improvement, this paper develops an efficient framework for network robustness prediction, the spatial pyramid pooling convolutional neural network (SPP-CNN). The new framework installs a spatial pyramid pooling layer between the convolutional and fully-connected layers, overcoming the common mismatch issue in the CNN-based prediction approaches and extending its generalizability. Extensive experiments are carried out by comparing SPP-CNN with three state-of-the-art robustness predictors, namely one CNN-based and two graph neural networks-based frameworks. Synthetic and real-world networks, both directed and undirected, are investigated. Experimental results demonstrate that the proposed SPP-CNN achieves better prediction performances and better generalizability for both cases of known and unknown datasets, with significantly lower time-consumption, than its counterparts.

How to cite this publication

Chengpei Wu, Yang Lou, Lin Wang, Junli Li, Xiang Li, Guanrong Chen (2023). SPP-CNN: An Efficient Framework for Network Robustness Prediction. IEEE Transactions on Circuits and Systems I Regular Papers, 70(10), pp. 4067-4079, DOI: 10.1109/tcsi.2023.3296602.

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Publication Details

Type

Article

Year

2023

Authors

6

Datasets

0

Total Files

0

Language

English

Journal

IEEE Transactions on Circuits and Systems I Regular Papers

DOI

10.1109/tcsi.2023.3296602

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