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Event Data Analysis of Conflict×Event Data Analysis×
CampoInternational RelationsPolitical Science
FamiliaProcess / pipelineProcess / pipeline
Año de origen1994
Autor originalPhilip Schrodt (KEDS/TABARI); ICEWS team (Boschee et al.)Conflict-studies and computational-social-science traditions (McClelland, Schrodt, King)
TipoAutomated extraction of structured political events from news textAutomated coding and analysis of who-did-what-to-whom event records
Fuente seminalSchrodt, P. A., Davis, S. G., & Weddle, J. L. (1994). Political science: KEDS — A program for the machine coding of event data. Social Science Computer Review, 12(4), 561–588. See also Gerner, Schrodt et al. (1994), Machine coding of event data using regional and international sources, International Studies Quarterly, 38(1), 91–119. DOI ↗Schrodt, P. A. (2012). Precedents, Progress, and Prospects in Political Event Data. International Interactions, 38(4), 546–569. DOI ↗
AliasPolitical Event Data, Machine-Coded Conflict Event Data, Conflict Event Extraction, Who-Did-What-to-Whom Event CodingEvent data coding, Political event data, Conflict event data, CAMEO event coding
Relacionados43
ResumenEvent data analysis is the automated extraction of structured records of political interactions — who did what to whom, when, and where — from large volumes of news text, for the quantitative study of conflict and cooperation. Pioneered for machine coding by Philip Schrodt with the KEDS and TABARI systems and scaled in projects such as ICEWS and GDELT, it turns unstructured reporting into dated actor-action-target triples coded to an ontology like CAMEO, which can then be aggregated into time series of interstate or intrastate hostility.Event data analysis converts streams of news reports into structured records of political interactions — who did what to whom, when — and aggregates them into time series of cooperation and conflict between actors. Each event is coded as a source actor, an action type drawn from an ontology such as CAMEO, a target actor, and a date. Modern systems extract these events automatically from millions of news stories, enabling near-real-time measurement of interstate and intrastate behavior for forecasting and analysis.
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ScholarGateComparar métodos: Event Data Analysis of Conflict · Event Data Analysis. Recuperado el 2026-06-24 de https://scholargate.app/es/compare