Peiper Nicholas C, Baumgartner Peter M, Chew Robert F, Hsieh Yuli P, Bieler Gayle S, Bobashev Georgiy V, Siege Christopher, Zarkin Gary A
RTI International, Behavioral Health and Criminal Justice Research Division, Research Triangle Park, NC, United States.
RTI International, Center for Data Science, Research Triangle Park, NC, United States.
J Med Internet Res. 2017 Jul 4;19(7):e236. doi: 10.2196/jmir.7137.
Twitter represents a social media platform through which medical cannabis dispensaries can rapidly promote and advertise a multitude of retail products. Yet, to date, no studies have systematically evaluated Twitter behavior among dispensaries and how these behaviors influence the formation of social networks.
This study sought to characterize common cyberbehaviors and shared follower networks among dispensaries operating in two large cannabis markets in California.
From a targeted sample of 119 dispensaries in the San Francisco Bay Area and Greater Los Angeles, we collected metadata from the dispensary accounts using the Twitter API. For each city, we characterized the network structure of dispensaries based upon shared followers, then empirically derived communities with the Louvain modularity algorithm. Principal components factor analysis was employed to reduce 12 Twitter measures into a more parsimonious set of cyberbehavioral dimensions. Finally, quadratic discriminant analysis was implemented to verify the ability of the extracted dimensions to classify dispensaries into their derived communities.
The modularity algorithm yielded three communities in each city with distinct network structures. The principal components factor analysis reduced the 12 cyberbehaviors into five dimensions that encompassed account age, posting frequency, referencing, hyperlinks, and user engagement among the dispensary accounts. In the quadratic discriminant analysis, the dimensions correctly classified 75% (46/61) of the communities in the San Francisco Bay Area and 71% (41/58) in Greater Los Angeles.
The most centralized and strongly connected dispensaries in both cities had newer accounts, higher daily activity, more frequent user engagement, and increased usage of embedded media, keywords, and hyperlinks. Measures derived from both network structure and cyberbehavioral dimensions can serve as key contextual indicators for the online surveillance of cannabis dispensaries and consumer markets over time.
推特是一个社交媒体平台,医用大麻药房可借此迅速推广和宣传众多零售产品。然而,迄今为止,尚无研究系统评估药房在推特上的行为以及这些行为如何影响社交网络的形成。
本研究旨在描述加利福尼亚州两个大型大麻市场中运营的药房的常见网络行为和共享关注者网络。
从旧金山湾区和大洛杉矶地区119家药房的目标样本中,我们使用推特应用程序编程接口从药房账户收集元数据。对于每个城市,我们根据共享关注者来描述药房的网络结构,然后使用鲁汶模块化算法实证推导群落。采用主成分因子分析将12项推特指标简化为一组更简洁的网络行为维度。最后,实施二次判别分析以验证提取维度将药房分类到其推导群落中的能力。
模块化算法在每个城市产生了三个具有不同网络结构的群落。主成分因子分析将12种网络行为简化为五个维度,包括账户年龄、发帖频率、引用、超链接以及药房账户之间的用户参与度。在二次判别分析中,这些维度正确分类了旧金山湾区75%(46/61)的群落和大洛杉矶地区71%(41/58)的群落。
两个城市中最集中且联系最紧密的药房拥有更新的账户、更高的日常活跃度、更频繁的用户参与度,以及更多地使用嵌入式媒体、关键词和超链接。从网络结构和网络行为维度得出的指标可作为随时间对大麻药房和消费市场进行在线监测的关键背景指标。