Using Radical Environmentalist Texts to Uncover Network Structure and Network Features
收藏DataONE2018-01-10 更新2024-06-25 收录
下载链接:
https://search.dataone.org/view/sha256:07a0476b5272722f314b5ca3a2fff21b63f9781c10c3b3e75cc5e617da2cf320
下载链接
链接失效反馈官方服务:
资源简介:
Abstract: Radical social movements are broadly engaged in, and dedicated to, promoting change in their social environment. In their corresponding efforts to call attention to various causes, communicate with like-minded groups, and mobilize support for their activities, radical social movements also produce an enormous amount of text. These texts, like radical social movements themselves, are often (i) densely connected and (ii) highly variable in advocated protest activities. Given a corpus of radical social movement texts, can one uncover the underlying network structure of the radical activist groups involved in this movement? If so, can one then also identify which groups (and which sub-networks) are more prone to radical versus mainstream protest activities? Using a large corpus of British radical environmentalist texts (1992-2003), we seek to answer these questions through a novel integration of network discovery and unsupervised topic modeling. In doing so, we apply classic network descriptives (e.g. centrality measures) and more modern statistical models (e.g. Exponential Random Graph Models) to carefully parse apart these questions. To answer these questions we introduce a novel method for network classification through a novel application of STM. Our findings provide a number of revealing insights into the networks and nature of radical environmentalists and their texts.
创建时间:
2023-11-22



