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Spatial Influence vs. Community Influence: Modeling the Global Spread of Social Media

机译:空间影响力与社区影响力:建模社交媒体的全球传播

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In this paper we seek to understand and model the global spread of social media. How does social media spread from location to location across the globe? Can we model this spread and predict where social media will be popular in the future? Toward answering these questions, we develop a probabilistic model that synthesizes two conflicting hypotheses about the nature of online information spread: (ⅰ) the spatial influence model, which asserts that social media spreads to locations that are close by; and (ⅱ) the community affinity influence model, which asserts that social media spreads between locations that are culturally connected, even if they are distant. Based on the geospatial footprint of 755 million geo-tagged hashtags spread through Twitter, we evaluate these models at predicting locations that will adopt hashtags in the future. We find that distance is the single most important explanation of future hashtag adoption since hashtags are fundamentally local. We also find that community affinities (like culture, language, and common interests) enhance the quality of purely spatial models, indicating the necessity of incorporating non-spatial features into models of global social media spread.
机译:在本文中,我们试图了解和建模社交媒体的全球传播。社交媒体如何在全球各地传播?我们能否对这种传播进行建模并预测社交媒体在未来将流行的地方?为了回答这些问题,我们建立了一个概率模型,该模型综合了有关在线信息传播性质的两个相互矛盾的假设:(ⅰ)空间影响模型,该模型断言社交媒体传播到附近的位置; (ⅱ)社区亲和力影响模型,该模型断言社交媒体在具有文化联系的位置之间传播,即使它们相距遥远。基于通过Twitter传播的7.55亿个带有地理标签的标签的地理空间足迹,我们在预测未来将采用标签的位置上评估了这些模型。我们发现,距离是将来采用标签的最重要的单一解释,因为标签基本上是本地的。我们还发现,社区亲和力(例如文化,语言和共同利益)提高了纯空间模型的质量,这表明有必要将非空间特征纳入全球社交媒体传播的模型中。

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