Citation

Developing a System for the Automated Coding of Protest Event Data

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Abstract:

Scholars and policy makers recognize the need for better and timelier data about contentious collective action, both the peaceful protests that are understood as part of democracy and the violent events that are threats to it. News media provide the only consistent source of information available outside government intelligence agencies and are thus the focus of all scholarly efforts to improve collective action data. Human coding of news sources is time-consuming and thus can never be timely and is necessarily limited to a small number of sources, a small time interval, or a limited set of protest “issues” as captured by particular keywords. There have been a number of attempts to address this need through machine coding of electronic versions of news media, but approaches so far remain less than optimal. The goal of this paper is to outline the steps needed build, test and validate an open-source system for coding protest events from any electronically available news source using advances from natural language processing and machine learning. Such a system should have the effect of increasing the speed and reducing the labor costs associated with identifying and coding collective actions in news sources, thus increasing the timeliness of protest data and reducing biases due to excessive reliance on too few news sources. The system will also be open, available for replication, and extendable by future social movement researchers, and social and computational scientists.

Most Common Document Word Stems:

event (131), protest (124), data (94), code (73), set (52), use (51), sourc (48), task (48), social (44), time (43), system (41), class (40), doca (40), new (39), polit (39), machin (36), articl (34), classifi (34), learn (34), collect (34), newspap (33),
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Association:
Name: Association for Education in Journalism and Mass Communication
URL:
http://www.aejmc.org


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URL: http://citation.allacademic.com/meta/p744655_index.html
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MLA Citation:

Hanna, Alexander. "Developing a System for the Automated Coding of Protest Event Data" Paper presented at the annual meeting of the Association for Education in Journalism and Mass Communication, Le Centre Sheraton, Montreal, Canada, Aug 06, 2014 <Not Available>. 2014-12-19 <http://citation.allacademic.com/meta/p744655_index.html>

APA Citation:

Hanna, A. , 2014-08-06 "Developing a System for the Automated Coding of Protest Event Data" Paper presented at the annual meeting of the Association for Education in Journalism and Mass Communication, Le Centre Sheraton, Montreal, Canada Online <PDF>. 2014-12-19 from http://citation.allacademic.com/meta/p744655_index.html

Publication Type: Conference Paper/Unpublished Manuscript
Review Method: Peer Reviewed
Abstract: Scholars and policy makers recognize the need for better and timelier data about contentious collective action, both the peaceful protests that are understood as part of democracy and the violent events that are threats to it. News media provide the only consistent source of information available outside government intelligence agencies and are thus the focus of all scholarly efforts to improve collective action data. Human coding of news sources is time-consuming and thus can never be timely and is necessarily limited to a small number of sources, a small time interval, or a limited set of protest “issues” as captured by particular keywords. There have been a number of attempts to address this need through machine coding of electronic versions of news media, but approaches so far remain less than optimal. The goal of this paper is to outline the steps needed build, test and validate an open-source system for coding protest events from any electronically available news source using advances from natural language processing and machine learning. Such a system should have the effect of increasing the speed and reducing the labor costs associated with identifying and coding collective actions in news sources, thus increasing the timeliness of protest data and reducing biases due to excessive reliance on too few news sources. The system will also be open, available for replication, and extendable by future social movement researchers, and social and computational scientists.


Similar Titles:
The Effect of New York Times Event Coding Techniques on the Analysis of Protest Data

Event Data, Civil Unrest and the Social, Political and Economic Event Database (SPEED) Project: Post World War II Trends in Political Protests and Violence

Developing a System for the Automated Coding of Protest Event Data


 
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