Online social media platforms enable influencers to distribute content and quickly capture audience reactions, significantly shaping their promotional strategies and advertising agreements. Understanding how sentiment dynamics and emotional contagion unfold among followers is vital for influencers and marketers, as these processes shape engagement, brand perception, and purchasing behavior. While sentiment analysis tools effectively track sentiment fluctuations, dynamical models explaining their evolution remain limited, often neglecting network structures and interactions both among blogs and between their topic-focused follower groups. In this study, we tracked influential tech-focused Weibo bloggers over six months, quantifying follower sentiment from text-mined feedback. By treating each blogger's audience as a single "macro-agent", we find that sentiment trajectories follow the principle of iterative averaging -- a foundational mechanism in many dynamical models of opinion formation, a theoretical framework at the intersection of social network analysis and dynamical systems theory. The sentiment evolution aligns closely with opinion-dynamics models, particularly modified versions of the classical French-DeGroot model that incorporate delayed perception and distinguish between expressed and private opinions. The inferred influence structures reveal interdependencies among blogs that may arise from homophily, whereby emotionally similar users subscribe to the same blogs and collectively shape the shared sentiment expressed within these communities.
翻译:在线社交媒体平台使影响者能够分发内容并快速捕捉受众反应,显著塑造其推广策略与广告协议。理解追随者间情感动态与情绪传染如何展开对影响者与营销者至关重要,因为这些过程决定了参与度、品牌认知与购买行为。尽管情感分析工具能有效追踪情感波动,但解释其演化的动力学模型仍较为有限,常忽略网络结构以及博客之间及其以主题为中心的追随者群体之间的交互作用。本研究追踪了具有影响力的科技类微博博主长达六个月,通过文本挖掘反馈量化追随者情感。通过将每位博主的受众视为单一“宏观主体”,我们发现情感轨迹遵循迭代平均原则——这是许多观点形成动力学模型的基础机制,该理论框架位于社交网络分析与动力学系统理论的交叉点。情感演化与观点动力学模型高度吻合,尤其是经典French-DeGroot模型的改进版本,这些模型纳入了延迟感知并区分了表达意见与私人意见。推断出的影响结构揭示了博客间的相互依赖性,这可能源于同质性效应,即情感相似的用户订阅相同博客并共同塑造这些社群内表达的共同情感。