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Social Clicks: What and Who Gets Read on Twitter?

机译:社交点击:什么以及谁在Twitter上获得阅读?

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摘要

Online news domains increasingly rely on social media to drive traffic to their websites. Yet we know surprisingly little about how a social media conversation mentioning an online article actually generates clicks. Sharing behaviors, in contrast, have been fully or partially available and scrutinized over the years. While this has led to multiple assumptions on the diffusion of information, each assumption was designed or validated while ignoring actual clicks. We present a large scale, unbiased study of social clicks-that is also the first data of its kind-gathering a month of web visits to online resources that are located in 5 leading news domains and that are mentioned in the third largest dsocial media by web referral (Twitter). Our dataset amounts to 2.8 million shares, together responsible for 75 billion potential views on this social media, and 9.6 million actual clicks to 59,088 unique resources. We design a reproducible methodology and carefully correct its biases. As we prove, properties of clicks impact multiple aspects of information diffusion, all previously unknown, (ⅰ) Secondary resources, that are not promoted through headlines and are responsible for the long tail of content popularity, generate more clicks both in absolute and relative terms, ( ⅱ) Social media attention is actually long-lived, in contrast with temporal evolution estimated from shares or receptions, ( ⅲ) The actual influence of an intermediary or a resource is poorly predicted by their share count, but we show how that prediction can be made more precise.
机译:在线新闻域越来越依赖社交媒体来吸引访问其网站的流量。但是,我们对于社交媒体中提及在线文章的对话实际上是如何产生点击的了解却很少。相反,这些年来,共享行为已经全部或部分可用并受到了审查。尽管这导致了关于信息传播的多种假设,但每种假设都是在设计或验证时忽略了实际点击。我们对社交点击进行了大规模,无偏见的研究,这也是同类数据的首次收集,该月收集了对五个主要新闻领域的在线资源的网络访问量,并在第三大dsocial媒体中提到网络引荐(Twitter)。我们的数据集总计280万股,加起来有700亿次在该社交媒体上的潜在观看次数,而对59,088个独特资源的960万次实际点击。我们设计了一种可重现的方法,并仔细纠正了其偏差。正如我们所证明的那样,点击的属性会影响信息传播的多个方面,所有以前未知的(ⅰ)二级资源(不是通过头条宣传的,而是导致内容受欢迎的长尾原因),无论从绝对角度还是相对角度而言,都会产生更多点击,(ⅱ)社会媒体的注意力实际上是长期存在的,与根据份额或接收量估算的时间演变相反,(ⅲ)中介机构或资源的实际影响力很难通过其份额数来预测,但是我们展示了这种预测如何可以变得更加精确。

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