ESND: An Embedding-based Framework for Signed Network Dismantling
June 13, 2024 Β· Declared Dead Β· π Expert systems with applications
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Authors
Chenwei Xie, Chuang Liu, Cong Li, Xiu-Xiu Zhan, Xiang Li
arXiv ID
2406.08899
Category
physics.soc-ph
Cross-listed
cs.SI
Citations
4
Venue
Expert systems with applications
Last Checked
4 months ago
Abstract
Network dismantling aims to maximize the disintegration of a network by removing a specific set of nodes or edges and is applied to various tasks in diverse domains, such as cracking down on crime organizations, delaying the propagation of rumors, and blocking the transmission of viruses. Most of the current network dismantling methods are tailored for unsigned networks, which only consider the connection between nodes without evaluating the nature of the relationships, such as friendship/hostility, enhancing/repressing, and trust/distrust. We here propose an embedding-based algorithm, namely ESND, to solve the signed network dismantling problem. The algorithm generally iterates the following four steps, i.e., giant component detection, network embedding, node clustering, and removal node selection. To illustrate the efficacy and stability of ESND, we conduct extensive experiments on six signed network datasets as well as null models, and compare the performance of our method with baselines. Experimental results consistently show that the proposed ESND is superior to the baselines and displays stable performance with the change in the network structure. Additionally, we examine the impact of sign proportions on network robustness via ESND, observing that networks with a high ratio of negative edges are generally easier to dismantle than networks with high positive edges.
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