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Diffusion size and structural virality: The effects of message and network features on spreading health information on twitter

机译:扩散大小和结构病毒传播:消息和网络功能对在Twitter上传播健康信息的影响

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摘要

Relying on diffusion of innovation theory, this study examines the impacts of perceived message features and network characteristics on size (i.e., the number of retweets a message receives) and structural virality (i.e., quantified distinction between broadcast and viral diffusion) of information diffusion on Twitter. The study collected 425 unique tweets posted by CDC during a 17-week period and constructed a diffusion tree for each unique tweet. Findings indicated that, with respect to message features, perceived efficacy after reading a tweet positively predicted diffusion size of the tweet, whereas perceived susceptibility to a health condition after reading a tweet positively predicted structural virality of the tweet. Perceived negative emotion positively predicted both size and structural virality. With respect to network features, the level of involvement of brokers in diffusing a tweet increased the tweet's structural virality. Theoretical and practical implications were discussed on disseminating health information via broadcasting and viral diffusion on social media.
机译:依靠创新理论的传播,本研究研究了感知的消息特征和网络特征对信息传播的规模(即消息接收的转发次数)和结构病毒性(即广播和病毒传播之间的定量区别)的影响。推特。该研究收集了CDC在17周内发布的425条独特的推文,并为每条独特的推文构建了一个扩散树。研究结果表明,就消息特征而言,阅读一条推文后感知到的功效可以正面预测该推文的扩散大小,而阅读一条推文后感知到的对健康状况的敏感性则可以预测该推文的结构病毒性。感知的负面情绪可以积极预测大小和结构病毒。关于网络功能,经纪人参与传播推文的程度增加了推文的结构病毒性。讨论了在社交媒体上通过广播和病毒传播传播健康信息的理论和实践意义。

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