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首页> 外文期刊>Journal of medical Internet research >Can Tweets Predict Citations? Metrics of Social Impact Based on Twitter and Correlation with Traditional Metrics of Scientific Impact
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Can Tweets Predict Citations? Metrics of Social Impact Based on Twitter and Correlation with Traditional Metrics of Scientific Impact

机译:推文可以预测引文吗?基于Twitter的社会影响指标以及与传统科学影响指标的关联

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Background: Citations in peer-reviewed articles and the impact factor are generally accepted measures of scientific impact. Web 2.0 tools such as Twitter, blogs or social bookmarking tools provide the possibility to construct innovative article-level or journal-level metrics to gauge impact and influence. However, the relationship of the these new metrics to traditional metrics such as citations is not known.Objective: (1) To explore the feasibility of measuring social impact of and public attention to scholarly articles by analyzing buzz in social media, (2) to explore the dynamics, content, and timing of tweets relative to the publication of a scholarly article, and (3) to explore whether these metrics are sensitive and specific enough to predict highly cited articles.Methods: Between July 2008 and November 2011, all tweets containing links to articles in the Journal of Medical Internet Research (JMIR) were mined. For a subset of 1573 tweets about 55 articles published between issues 3/2009 and 2/2010, different metrics of social media impact were calculated and compared against subsequent citation data from Scopus and Google Scholar 17 to 29 months later. A heuristic to predict the top-cited articles in each issue through tweet metrics was validated.Results: A total of 4208 tweets cited 286 distinct JMIR articles. The distribution of tweets over the first 30 days after article publication followed a power law (Zipf, Bradford, or Pareto distribution), with most tweets sent on the day when an article was published (1458/3318, 43.94% of all tweets in a 60-day period) or on the following day (528/3318, 15.9%), followed by a rapid decay. The Pearson correlations between tweetations and citations were moderate and statistically significant, with correlation coefficients ranging from .42 to .72 for the log-transformed Google Scholar citations, but were less clear for Scopus citations and rank correlations. A linear multivariate model with time and tweets as significant predictors (P < .001) could explain 27% of the variation of citations. Highly tweeted articles were 11 times more likely to be highly cited than less-tweeted articles (9/12 or 75% of highly tweeted article were highly cited, while only 3/43 or 7% of less-tweeted articles were highly cited; rate ratio 0.75/0.07 = 10.75, 95% confidence interval, 3.4–33.6). Top-cited articles can be predicted from top-tweeted articles with 93% specificity and 75% sensitivity. Conclusions: Tweets can predict highly cited articles within the first 3 days of article publication. Social media activity either increases citations or reflects the underlying qualities of the article that also predict citations, but the true use of these metrics is to measure the distinct concept of social impact. Social impact measures based on tweets are proposed to complement traditional citation metrics. The proposed twimpact factor may be a useful and timely metric to measure uptake of research findings and to filter research findings resonating with the public in real time.
机译:背景:同行评审文章中的引用和影响因子是公认的科学影响力度量。 Web 2.0工具(例如Twitter,博客或社交书签工具)为构建创新的文章级或期刊级度量标准提供了可能性,以评估影响力。然而,这些新指标与诸如引用之类的传统指标之间的关系尚不清楚。目的:(1)通过分析社交媒体中的嗡嗡声来探讨衡量学术文章的社会影响和公众关注度的可行性,(2)探索有关某篇学术文章发表的推文的动态,内容和时间安排,以及(3)探讨这些指标是否足够灵敏和具体,足以预测被高引用的文章。方法:2008年7月至2011年11月之间,所有推文挖掘了指向医学互联网研究杂志(JMIR)中文章的链接。对于在3/2009和2/2010之间发布的约55篇文章的1573条推文的子集,计算了不同的社交媒体影响指标并将其与17到29个月后的Scopus和Google Scholar的后续引文数据进行比较。验证了一种通过推文指标预测每期热门文章的启发式方法。结果:共有4208条推文引用了286条不同的JMIR文章。文章发布后的前30天,推文的分布遵循幂律(Zipf,Bradford或Pareto分布),大多数推文在文章发表的当天发送(1458/3318,占所有推文的43.94%)。 60天)或第二天(528 / 3318,15.9%),然后迅速衰减。推文与引文之间的Pearson相关性中等且具有统计意义,对数转换后的Google Scholar引文的相关系数在0.42至.72之间,但对于Scopus引文和等级相关性则不清楚。以时间和推文为主要预测因子的线性多元模型(P <.001)可以解释27%的引文变化。被高发的文章被高引用的可能性是被低发的文章的11倍(被高发的文章的9/12或75%被高引用,而被低发的文章中只有3/43或7%被高引用;比率比率0.75 / 0.07 = 10.75,95%置信区间3.4–33.6)。可以从发帖最多的文章中预测引用最多的文章,其特异性为93%,敏感性为75%。结论:推文可以在文章发布的前三天内预测被引用次数很高的文章。社交媒体活动要么增加了引文,要么反映了也可以预测引文的文章的基本品质,但是这些指标的真正用途是衡量社会影响的独特概念。提出了基于推文的社会影响措施,以补充传统的引用指标。拟议的影响因子可能是一种有用且及时的指标,用于衡量对研究结果的吸收并实时过滤与公众产生共鸣的研究结果。

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