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Strategies to find audience segments on Twitter for e-cigarette education campaigns

机译:在Twitter上找到针对电子烟教育活动的细分受众群的策略

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摘要

The development of public health education campaigns about tobacco products requires an understanding of specific audience segments including their views, intentions, use of media, perceived barriers, and benefits of change. For example, identifying and targeting individuals who express ambivalence about e-cigarette use on Twitter may be helpful in devising and focusing public health campaigns to reduce e-cigarette use. This study developed a novel analytic strategy using social network analysis to identify audience segments on Twitter based on positive, negative, and neutral e-cigarette sentiment. Using Twitter data collected from April 2015 to March 2016, we identified different sub-groups of users who retweeted about e-cigarettes, and measured each subgroup’s clustering coefficient (CC), which describes how tightly people cluster together. Ten high CC and ten low CC groups were randomly selected; then 100 randomly selected tweets from each group were coded for e-cigarette sentiment (positive, negative, neutral). Results indicate that differences in e-cigarette sentiment are associated with clustering of Twitter network ties. Statistical analyses revealed that high CC groups were more likely to have strong e-cigarette sentiments, suggesting that tightly clustered groups may be “echo chambers” (i.e., like-minded people repeating the same messages). By contrast, low CC groups were more likely to have neutral sentiments, and had greater fluctuation in sentiment over time, suggesting that they may be more flexible in their opinions about e-cigarettes and may be particularly receptive to targeted public health campaigns. Informatics techniques such as determination of clusters using social network analysis can be useful in identifying audience segments for future public health campaigns.
机译:开展有关烟草制品的公共健康教育运动需要了解特定的受众群体,包括他们的观点,意图,媒体的使用,可感知的障碍以及变革的收益。例如,识别和定位在Twitter上表达对电子烟使用含糊不清的个人可能有助于设计和集中公共卫生运动以减少电子烟的使用。这项研究使用社交网络分析开发了一种新颖的分析策略,以基于积极,消极和中性的电子烟情绪识别Twitter上的受众群体。使用2015年4月至2016年3月收集的Twitter数据,我们确定了转发电子烟的不同用户分组,并测量了每个分组的聚集系数(CC),该系数描述了人们聚集在一起的紧密程度。随机选择十个高CC组和十个低CC组。然后从每组中随机选择100条推文,以表达电子烟的情感(正面,负面,中性)。结果表明,电子烟情绪的差异与Twitter网络联系的聚集有关。统计分析表明,CC较高的人群更容易产生强烈的电子烟情绪,这表明聚集紧密的人群可能是“回音室”(即志同道合的人重复相同的信息)。相比之下,低CC人群更有可能具有中性的情绪,并且随着时间的流逝会有更大的情绪波动,这表明他们对电子烟的看法可能更灵活,并且可能特别接受有针对性的公共卫生运动。信息技术(例如使用社交网络分析确定聚类)可在为将来的公共卫生运动识别受众群体时很有用。

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