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      CASM: A Deep-Learning Approach for Identifying Collective Action Events with Text and Image Data from Social Media

      1 , 2
      Sociological Methodology
      SAGE Publications

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          Abstract

          Protest event analysis is an important method for the study of collective action and social movements and typically draws on traditional media reports as the data source. We introduce collective action from social media (CASM)—a system that uses convolutional neural networks on image data and recurrent neural networks with long short-term memory on text data in a two-stage classifier to identify social media posts about offline collective action. We implement CASM on Chinese social media data and identify more than 100,000 collective action events from 2010 to 2017 (CASM-China). We evaluate the performance of CASM through cross-validation, out-of-sample validation, and comparisons with other protest data sets. We assess the effect of online censorship and find it does not substantially limit our identification of events. Compared to other protest data sets, CASM-China identifies relatively more rural, land-related protests and relatively few collective action events related to ethnic and religious conflict.

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          Most cited references57

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          Media Discourse and Public Opinion on Nuclear Power: A Constructionist Approach

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            How Censorship in China Allows Government Criticism but Silences Collective Expression

            We offer the first large scale, multiple source analysis of the outcome of what may be the most extensive effort to selectively censor human expression ever implemented. To do this, we have devised a system to locate, download, and analyze the content of millions of social media posts originating from nearly 1,400 different social media services all over China before the Chinese government is able to find, evaluate, and censor (i.e., remove from the Internet) the subset they deem objectionable. Using modern computer-assisted text analytic methods that we adapt to and validate in the Chinese language, we compare the substantive content of posts censored to those not censored over time in each of 85 topic areas. Contrary to previous understandings, posts with negative, even vitriolic, criticism of the state, its leaders, and its policies are not more likely to be censored. Instead, we show that the censorship program is aimed at curtailing collective action by silencing comments that represent, reinforce, or spur social mobilization, regardless of content. Censorship is oriented toward attempting to forestall collective activities that are occurring now or may occur in the future—and, as such, seem to clearly expose government intent.
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              Context-Dependent Pre-Trained Deep Neural Networks for Large-Vocabulary Speech Recognition

                Author and article information

                Journal
                Sociological Methodology
                Sociological Methodology
                SAGE Publications
                0081-1750
                1467-9531
                July 19 2019
                July 19 2019
                : 008117501986024
                Affiliations
                [1 ]Princeton University, Princeton, NJ, USA
                [2 ]Stanford University, Stanford, CA, USA
                Article
                10.1177/0081175019860244
                f3a557e5-d76a-4542-b5b9-0a297f66d15b
                © 2019

                http://journals.sagepub.com/page/policies/text-and-data-mining-license

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