Zhang Renquan, Qu Xilong, Zhang Qiang, Xu Xirong, Pei Sen
School of Mathematical Sciences, Dalian University of Technology, Dalian 116024, China.
School of Computer Science and Technology, Dalian University of Technology, Dalian 116024, China.
Chaos. 2024 Feb 1;34(2). doi: 10.1063/5.0178329.
Influence maximization problem has received significant attention in recent years due to its application in various domains, such as product recommendation, public opinion dissemination, and disease propagation. This paper proposes a theoretical analysis framework for collective influence in hypergraphs, focusing on identifying a set of seeds that maximize influence in threshold models. First, we extend the message passing method from pairwise networks to hypergraphs to accurately describe the activation process in threshold models. Then, we introduce the concept of hypergraph collective influence (HCI) to measure the influence of nodes. Subsequently, we design an algorithm, HCI-TM, to select the influence maximization set, taking into account both node and hyperedge activation. Numerical simulations demonstrate that HCI-TM outperforms several competing algorithms in synthetic and real-world hypergraphs. Furthermore, we find that HCI can be used as a tool to predict the occurrence of cascading phenomena. Notably, we find that the HCI-TM algorithm works better for larger average hyperdegrees in Erdös-Rényi hypergraphs and smaller power-law exponents in scale-free hypergraphs.
近年来,影响力最大化问题因其在产品推荐、舆论传播和疾病传播等各个领域的应用而受到了广泛关注。本文提出了一种超图中集体影响力的理论分析框架,重点在于识别在阈值模型中能使影响力最大化的一组种子节点。首先,我们将消息传递方法从成对网络扩展到超图,以准确描述阈值模型中的激活过程。然后,我们引入超图集体影响力(HCI)的概念来衡量节点的影响力。随后,我们设计了一种算法HCI-TM,在考虑节点和超边激活的情况下选择影响力最大化集合。数值模拟表明,在合成超图和真实世界超图中,HCI-TM优于几种竞争算法。此外,我们发现HCI可以用作预测级联现象发生的工具。值得注意的是,我们发现HCI-TM算法在厄多斯 - 雷尼超图中对于较大的平均超度数以及在无标度超图中对于较小的幂律指数表现更好。