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Modeling influence and community in social media data using the digital methods initiative-twitter capture and analysis toolkit (DMI-TCAT) and Gephi

机译:使用数字方法启动 - Twitter捕获和分析工具包(DMI-TCAT)和Gephi建模影响社交媒体数据的影响和社区

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The methods summarized in this video tutorial series are based on the open source Digital Methods Initiative – Twitter Capture and Analysis Toolkit (DMI-TCAT) that allows media researchers to collect tweets off the STREAM API (application programming interface) on an ongoing basis. With DMI - TCAT and the open source data visualization software Gephi, social data in the millions of units is quickly and easily sorted by algorithms to find users or items of importance on Twitter, such as in the below.While these figures and the data gathered though the DMI-TCAT do not provide full firehose access to all historical tweets, they do provide a generally representative sample of tweets that is relatively proportional to the total volume of tweets being posted at any given time (Gerlitz & Rieder, 2013; Groshek & Tandoc, 2016). For more details on the DMI-TCAT and its operation, we encourage readers to visit its github page (https://github.com/digitalmethodsinitiative/dmi-tcat) and note that this cloud-based analytics program is free and customizable.The specific techniques covered in the methodology reported here in text and expanded upon in the video tutorial series include how to:? Model influence users by sizing nodes with the betweenness centrality algorithm;? Identify community groups by adding color using the modularity algorithm;? Spatialize networks through applying the openord algorithm;? Make social network graphs dynamic and interactive online.
机译:该视频教程系列总结的方法基于开源数字方法主动 - Twitter捕获和分析工具包(DMI-TCAT),允许媒体研究人员在持续的基础上从流API(应用程序编程接口)上收集推文。使用DMI - TCAT和开源数据可视化软件Gephi,通过算法快速且容易地对数百万个单位进行社交数据,以查找推特上的用户或重要性项目,例如下面。这些数字和收集的数据虽然DMI-TCAT不提供对所有历史推断的全部Firehose访问,但他们确实提供了一般代表性的推文样本,与在任何给定时间发布的推文总量相对成比例(Gerlitz&Rieder,2013; Groshek& Tandoc,2016)。有关DMI-TCAT及其操作的更多详细信息,我们鼓励读者访问其GitHub页面(https://github.com/digitalmethodsinitiveive/dmi-tcat),并注意到基于云的分析程序是免费的和可定制的。在文本中报告的方法中涵盖的具体技术,并在视频教程系列中扩展包括如何:?模型影响用户通过尺寸为中心算法的尺寸节点;通过使用模块化算法添加颜色来识别社区组;?通过应用Opport算法时空化网络;?使社交网络图形动态和互动在线。

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