Mitigation of adversarial attacks on voter model dynamics by network heterogeneity

IF 2.6 Q1 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Journal of Physics Complexity Pub Date : 2023-05-04 DOI:10.1088/2632-072X/acd296
Katsumi Chiyomaru, Kazuhiro Takemoto
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引用次数: 0

Abstract

Voter model dynamics in complex networks are vulnerable to adversarial attacks. In particular, the voting outcome can be inverted by adding extremely small perturbations that are strategically generated in social networks, even when one opinion is dominant over the other. However, the mitigation of adversarial attacks on the voter model dynamics in complex networks has not been thoroughly investigated. Thus, we examined network structures that could mitigate adversarial attacks using model networks and real-world networks, considering that the network structure affects the voter model dynamics. Numerical simulations demonstrated that the heterogeneity of node degrees in the networks (degree heterogeneity) significantly mitigates adversarial attacks. In particular, for complex networks with a power-law degree distribution P(k)∼k−γ , the mitigation effect is significant for γ⩽3 . However, the mitigation effect of the degree heterogeneity was relatively weak for large and dense networks. The degree correlation and clustering in the networks exhibited almost no mitigation effect. The results enhance our understanding of how opinion dynamics and collective decision-making are distorted in social networks and may be useful for considering defense strategies against adversarial attacks.
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利用网络异质性缓解对选民模型动力学的对抗性攻击
复杂网络中的选民模型动态容易受到对抗性攻击。特别是,投票结果可以通过在社交网络中战略性地产生极小的扰动来逆转,即使一种意见占主导地位。然而,在复杂网络中,对选民模型动力学的对抗性攻击的缓解尚未得到彻底的研究。因此,考虑到网络结构会影响选民模型动态,我们研究了可以使用模型网络和现实世界网络减轻对抗性攻击的网络结构。数值模拟表明,网络中节点度的异质性(度异质性)显著减轻了对抗性攻击。特别是,对于具有幂律度分布P(k) ~ k−γ的复杂网络,γ≥3时的缓解效果显著。然而,对于大型和密集的网络,程度异质性的缓解作用相对较弱。网络中的关联度和聚类几乎没有减缓作用。研究结果增强了我们对社会网络中舆论动态和集体决策如何被扭曲的理解,并可能有助于考虑针对对抗性攻击的防御策略。
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来源期刊
Journal of Physics Complexity
Journal of Physics Complexity Computer Science-Information Systems
CiteScore
4.30
自引率
11.10%
发文量
45
审稿时长
14 weeks
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