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Quantifying Information Overload in Social Media and Its Impact on Social Contagions

机译:量化社交媒体中的信息超载及其对社会凝视的影响

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Information overload has become an ubiquitous problem in modern society. Social media users and microbloggers receive an endless flow of information, often at a rate far higher than their cognitive abilities to process the information. In this paper, we conduct a large scale quantitative study of information overload and evaluate its impact on information dissemination in the Twitter social media site. We model social media users as information processing systems that queue incoming information according to some policies, process information from the queue at some unknown rates and decide to forward some of the incoming information to other users. We show how timestamped data about tweets received and forwarded by users can be used to uncover key properties of their queueing policies and estimate their information processing rates and limits. Such an understanding of users' information processing behaviors allows us to infer whether and to what extent users suffer from information overload. Our analysis provides empirical evidence of information processing limits for social media users and the prevalence of information overloading. The most active and popular social media users are often the ones that are overloaded. Moreover, we find that the rate at which users receive information impacts their processing behavior, including how they prioritize information from different sources, how much information they process, and how quickly they process information. Finally, the susceptibility of a social media user to social contagions depends crucially on the rate at which she receives information. An exposure to a piece of information, be it an idea, a convention or a product, is much less effective for users that receive information at higher rates, meaning they need more exposures to adopt a particular contagion.
机译:信息超载已成为现代社会中无处不在的问题。社交媒体用户和微博管理员可以获得无穷无尽的信息流,通常以高于处理信息的认知能力的速率远远高。在本文中,我们对信息过载进行了大规模的定量研究,并评估其对Twitter社交媒体网站信息传播的影响。我们将社交媒体用户塑造作为信息处理系统,该信息处理系统根据一些策略排队传入信息,从一些未知速率从队列的处理信息,并决定将一些传入信息转发给其他用户。我们展示了有关由用户收到和转发的推文的时间戳数据如何用于揭示其排队策略的关键属性并估算其信息处理速率和限制。对用户信息处理行为的这种理解允许我们推断用户是否患有信息过载的程度。我们的分析提供了社交媒体用户信息处理限制的经验证据和信息超载的普遍性。最活跃和流行的社交媒体用户通常是重载的用户。此外,我们发现用户接收信息的速率会影响其处理行为,包括它们如何从不同来源的信息优先考虑他们处理的信息,以及它们处理信息的快速。最后,社交媒体用户对社交凝视的易感性取决于她收到信息的速率。曝光到一段信息,这是一个想法,会议或产品,对接收较高速率的信息的用户来说较小,这意味着它们需要更多的暴露来采用特定的传染。

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