Predicting Network Controllability Robustness: A Convolutional Neural Network Approach
Yang Lou, Yaodong He, Lin Wang, Guanrong Chen

TL;DR
This paper introduces a convolutional neural network approach to predict network controllability robustness efficiently, replacing traditional simulation methods and enabling quick assessments of network resilience against attacks.
Contribution
The paper presents a novel machine learning framework using CNNs to predict network controllability robustness directly from adjacency matrices, reducing computational time significantly.
Findings
CNN-based predictions are accurate across various network types.
The method significantly reduces computational overhead compared to simulations.
The approach is reliable and applicable to large networks.
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 paper, a method to predict the controllability robustness based on machine learning using a convolutional neural network is…
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