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Utilizing Big Data and Twitter to Discover Emergent Online Communities of Cannabis Users

机译:利用大数据和Twitter发现大麻用户的新兴在线社区

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摘要

Large shifts in medical, recreational, and illicit cannabis consumption in the United States have implications for personalizing treatment and prevention programs to a wide variety of populations. As such, considerable research has investigated clinical presentations of cannabis users in clinical and population-based samples. Studies leveraging big data, social media, and social network analysis have emerged as a promising mechanism to generate timely insights that can inform treatment and prevention research. This study extends a novel method called stochastic block modeling to derive communities of cannabis consumers as part of a complex social network on Twitter. A set of examples illustrate how this method can ascertain candidate samples of medical, recreational, and illicit cannabis users. Implications for research planning, intervention design, and public health surveillance are discussed.
机译:在美国,医疗,娱乐和非法大麻的消费量发生了巨大变化,这对个性化治疗和预防计划的广泛人群产生了影响。因此,大量研究调查了临床和人群样本中大麻使用者的临床表现。利用大数据,社交媒体和社交网络分析的研究已成为一种有前途的机制,可以及时产生可用于治疗和预防研究的见解。这项研究扩展了一种称为随机区块建模的新方法,以推导大麻消费者社区,作为Twitter上复杂社交网络的一部分。一组示例说明了该方法如何确定医疗,娱乐和非法大麻使用者的候选样本。讨论了对研究计划,干预设计和公共卫生监督的意义。

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