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Public science communication on Twitter: a visual analytic approach

机译:Twitter上的公共科学传播:一种视觉分析方法

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Purpose - The purpose of this paper is to assess high-dimensional visualisation, combined with pattern matching, as an approach to observing dynamic changes in the ways people tweet about science topics. Design/methodology/approach - The high-dimensional visualisation approach was applied to three science topics to test its effectiveness for longitudinal analysis of message framing on Twitter over two disjoint periods in time. The paper uses coding frames to drive categorisation and visual analytics of tweets discussing the science topics. Findings - The findings point to the potential of this mixed methods approach, as it allows sufficiently high sensitivity to recognise and support the analysis of non-trending as well as trending topics on Twitter. Research limitations/implications - Three topics are studied, these illustrate a range of frames, but results may not be representative of all science topics. Social implications - Funding bodies increasingly encourage scientists to participate in public engagement. As social media provides an avenue actively utilised for public communication, understanding the nature of the dialog on this medium is important for the scientific community and the public at large. Originality/value - This study differs from standard approaches to the analysis of micropost data, which tend to focus on large-scale data sets. It provides evidence that this approach enables practical and effective analysis of the content of midsize to large collections of microposts.
机译:目的-本文的目的是评估高维可视化效果,并结合模式匹配,以观察人们对科学主题发推文的方式的动态变化。设计/方法/方法-将高维可视化方法应用于三个科学主题,以测试其在两个不连续的时期内对Twitter上的消息框架进行纵向分析的有效性。本文使用编码框架来驱动讨论科学主题的推文的分类和可视化分析。调查结果-调查结果表明了这种混合方法的潜力,因为它允许足够高的灵敏度来识别和支持Twitter上非趋势性和趋势性主题的分析。研究的局限性/意义-研究了三个主题,这些主题说明了一系列框架,但结果可能并不代表所有科学主题。社会影响-资助机构越来越多地鼓励科学家参与公众参与。由于社交媒体提供了一种积极用于公共交流的渠道,因此了解这种媒体上对话的性质对科学界和整个公众都很重要。原创性/价值-这项研究与微博数据分析的标准方法不同,微博数据的分析方法通常侧重于大型数据集。它提供了证据,表明该方法可以对中型到大型微博集的内容进行切实有效的分析。

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