Network Interdiction Goes Neural
Lei Zhang, Zhiqian Chen, Chang-Tien Lu, Liang Zhao

TL;DR
This paper introduces a neural network approach using multipartite GNNs to solve complex network interdiction problems more efficiently and accurately than traditional methods.
Contribution
The paper presents a novel GNN-based method that models network interdiction as MILP instances, improving generalization and performance over existing approaches.
Findings
Outperforms baseline models in two network interdiction tasks
Provides better generalization to unseen network instances
Achieves improvements over traditional exact solvers
Abstract
Network interdiction problems are combinatorial optimization problems involving two players: one aims to solve an optimization problem on a network, while the other seeks to modify the network to thwart the first player's objectives. Such problems typically emerge in an attacker-defender context, encompassing areas such as military operations, disease spread analysis, and communication network management. The primary bottleneck in network interdiction arises from the high time complexity of using conventional exact solvers and the challenges associated with devising efficient heuristic solvers. GNNs, recognized as a cutting-edge methodology, have shown significant effectiveness in addressing single-level CO problems on graphs, such as the traveling salesman problem, graph matching, and graph edit distance. Nevertheless, network interdiction presents a bi-level optimization challenge,…
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