Learning Communities from Equilibria of Nonlinear Opinion Dynamics

Yu Xing, Anastasia Bizyaeva, Karl H. Johansson
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Abstract

This paper studies community detection for a nonlinear opinion dynamics model from its equilibria. It is assumed that the underlying network is generated from a stochastic block model with two communities, where agents are assigned with community labels and edges are added independently based on these labels. Agents update their opinions following a nonlinear rule that incorporates saturation effects on interactions. It is shown that clustering based on a single equilibrium can detect most community labels (i.e., achieving almost exact recovery), if the two communities differ in size and link probabilities. When the two communities are identical in size and link probabilities, and the inter-community connections are denser than intra-community ones, the algorithm can achieve almost exact recovery under negative influence weights but fails under positive influence weights. Utilizing the fixed point equation and spectral methods, we also propose a detection algorithm based on multiple equilibria, which can detect communities with positive influence weights. Numerical experiments demonstrate the performance of the proposed algorithms.
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从非线性意见动态平衡中学习社群
本文从非线性意见动力学模型的均衡点出发,研究了该模型的社群检测。假设底层网络是由具有两个社群的随机块模型生成的,其中代理被分配了社群标签,并根据这些标签独立添加边。代理根据非线性规则更新其观点,该规则包含了互动的饱和效应。研究表明,如果两个社群的规模和链接概率不同,基于单一均衡的聚类可以检测到大多数社群标签(即实现几乎精确的恢复)。当两个社群的规模和链接概率相同,且社群间的连接比社群内的连接更密集时,该算法在负影响权重下可以实现几乎精确的恢复,但在正影响权重下则失败。利用定点方程和光谱方法,我们还提出了一种基于多重均衡的检测算法,该算法可以检测出具有正影响权重的群落。
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