TL;DR
This paper introduces a neural influence ranking model trained on tiny synthetic networks that effectively identifies vital nodes for dismantling various real-world complex networks, outperforming existing methods.
Contribution
The paper presents a novel neural model trained on small synthetic networks that generalizes to diverse real-world networks for efficient network dismantling.
Findings
NIRM requires fewer vital nodes to dismantle networks.
NIRM encodes local and global network signals effectively.
NIRM outperforms state-of-the-art competitors in experiments.
Abstract
Can we employ one neural model to efficiently dismantle many complex yet unique networks? This article provides an affirmative answer. Diverse real-world systems can be abstracted as complex networks each consisting of many functional nodes and edges. Percolation theory has indicated that removing only a few vital nodes can cause the collapse of whole network. However, finding the least number of such vital nodes is a rather challenging task for large networks due to its NP-hardness. Previous studies have proposed many centrality measures and heuristic algorithms to tackle this network dismantling (ND) problem. Different from theirs, this article tries to approach the ND task by designing a neural model which can be trained from tiny synthetic networks but will be applied for various real-world networks. It seems a discouraging mission at first sight, as network sizes and topologies are…
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