arXiv Open Access 2022

A Learning Convolutional Neural Network Approach for Network Robustness Prediction

Yang Lou Ruizi Wu Junli Li Lin Wang Xiang Li +1 lainnya
Lihat Sumber

Abstrak

Network robustness is critical for various societal and industrial networks again malicious attacks. In particular, connectivity robustness and controllability robustness reflect how well a networked system can maintain its connectedness and controllability against destructive attacks, which can be quantified by a sequence of values that record the remaining connectivity and controllability of the network after a sequence of node- or edge-removal attacks. Traditionally, robustness is determined by attack simulations, which are computationally very time-consuming or even practically infeasible. In this paper, an improved method for network robustness prediction is developed based on learning feature representation using convolutional neural network (LFR-CNN). In this scheme, higher-dimensional network data are compressed to lower-dimensional representations, and then passed to a CNN to perform robustness prediction. Extensive experimental studies on both synthetic and real-world networks, both directed and undirected, demonstrate that 1) the proposed LFR-CNN performs better than other two state-of-the-art prediction methods, with significantly lower prediction errors; 2) LFR-CNN is insensitive to the variation of the network size, which significantly extends its applicability; 3) although LFR-CNN needs more time to perform feature learning, it can achieve accurate prediction faster than attack simulations; 4) LFR-CNN not only can accurately predict network robustness, but also provides a good indicator for connectivity robustness, better than the classical spectral measures.

Penulis (6)

Y

Yang Lou

R

Ruizi Wu

J

Junli Li

L

Lin Wang

X

Xiang Li

G

Guanrong Chen

Format Sitasi

Lou, Y., Wu, R., Li, J., Wang, L., Li, X., Chen, G. (2022). A Learning Convolutional Neural Network Approach for Network Robustness Prediction. https://arxiv.org/abs/2203.10552

Akses Cepat

Lihat di Sumber
Informasi Jurnal
Tahun Terbit
2022
Bahasa
en
Sumber Database
arXiv
Akses
Open Access ✓