Social influence pervades our everyday lives and lays the foundation for complex social phenomena. In a crisis like the COVID-19 pandemic, social influence can determine whether life-saving information is adopted. Existing literature studying online social influence suffers from several drawbacks. First, a disconnect appears between psychology approaches, which are generally performed and tested in controlled lab experiments, and the quantitative methods, which are usually data-driven and rely on network and event analysis. The former are slow, expensive to deploy, and typically do not generalize well to topical issues (such as an ongoing pandemic); the latter often oversimplify the complexities of social influence and ignore psychosocial literature. This work bridges this gap and presents three contributions towards modeling and empirically quantifying online influence. The first contribution is a data-driven Generalized Influence Model that incorporates two novel psychosocial-inspired mechanisms: the conductance of the diffusion network and the social capital distribution. The second contribution is a framework to empirically rank users' social influence using a human-in-the-loop active learning method combined with crowdsourced pairwise influence comparisons. We build a human-labeled ground truth, calibrate our generalized influence model and perform a large-scale evaluation of influence. We find that our generalized model outperforms the current state-of-the-art approaches and corrects the inherent biases introduced by the widely used follower count. As the third contribution, we apply the influence model to discussions around COVID-19. We quantify users' influence, and we tabulate it against their professions. We find that the executives, media, and military are more influential than pandemic-related experts such as life scientists and healthcare professionals.
翻译:社会影响渗透我们日常生活,为复杂的社会现象打下基础。在像COVID-19大流行这样的危机中,社会影响可以决定是否采用拯救生命的信息。研究在线社会影响的现有文献存在若干缺陷。首先,一般在受控制的实验室实验中进行和测试的心理学方法与通常以数据为驱动并依赖网络和事件分析的定量方法之间似乎脱节。前者缓慢、昂贵,通常不能被广泛应用到热门问题(例如持续流行);后者往往过于简单化社会影响的复杂性,忽视社会学文献。这项工作弥合了这一差距,为模拟和实证量化在线影响提出了三项贡献。第一项贡献是数据驱动的通用影响模型,它包含两种新型的社会心理激励机制:传播网络的运行以及社会资本分配。第二项贡献是实证性地将用户的社会影响定级框架,使用“人与用户”的积极学习方法,与众源影响比较相结合。我们构建了一种人标签式的地面讨论基础, 校正了我们所使用的基本健康影响,我们用到的常规性模型和大规模评估。我们所应用的常规性模型,我们用到的常规性模型来纠正当前的影响。