The openness of social media enables the free exchange of opinions, but it also presents challenges in guiding opinion evolution towards global consensus. Existing methods often directly modify user views or enforce cross-group connections. These intrusive interventions undermine user autonomy, provoke psychological resistance, and reduce the efficiency of global consensus. Additionally, due to the lack of a long-term perspective, promoting local consensus often exacerbates divisions at the macro level. To address these issues, we propose the hierarchical, non-intrusive opinion guidance framework, H-NeiFi. It first establishes a two-layer dynamic model based on social roles, considering the behavioral characteristics of both experts and non-experts. Additionally, we introduce a non-intrusive neighbor filtering method that adaptively controls user communication channels. Using multi-agent reinforcement learning (MARL), we optimize information propagation paths through a long-term reward function, avoiding direct interference with user interactions. Experiments show that H-NeiFi increases consensus speed by 22.0% to 30.7% and maintains global convergence even in the absence of experts. This approach enables natural and efficient consensus guidance by protecting user interaction autonomy, offering a new paradigm for social network governance.
翻译:社交媒体的开放性促进了观点的自由交流,但也带来了将观点演化引导至全局共识的挑战。现有方法通常直接修改用户观点或强制建立跨群体连接。这类侵入式干预不仅损害用户自主性、引发心理抵触,还会降低全局共识的效率。此外,由于缺乏长期视角,促进局部共识往往在宏观层面加剧了群体分化。为解决这些问题,我们提出了分层式非侵入观点引导框架H-NeiFi。该框架首先基于社会角色建立双层动态模型,兼顾专家与非专家的行为特征;同时引入非侵入式邻居过滤方法,自适应地控制用户通信信道。通过多智能体强化学习(MARL),我们借助长期奖励函数优化信息传播路径,避免直接干预用户交互。实验表明,H-NeiFi将共识形成速度提升了22.0%至30.7%,且在专家缺失时仍能保持全局收敛性。该方法通过保护用户交互自主性实现了自然高效的共识引导,为社交网络治理提供了新范式。