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Event Data Analysis×Wordfish Scaling×
DomainePolitical SciencePolitical Science
FamilleProcess / pipelineLatent structure
Année d'origine2008
Auteur d'origineConflict-studies and computational-social-science traditions (McClelland, Schrodt, King)Jonathan Slapin and Sven-Oliver Proksch
TypeAutomated coding and analysis of who-did-what-to-whom event recordsUnsupervised latent-position model for word-count data
Source fondatriceSchrodt, P. A. (2012). Precedents, Progress, and Prospects in Political Event Data. International Interactions, 38(4), 546–569. DOI ↗Slapin, J. B., & Proksch, S.-O. (2008). A Scaling Model for Estimating Time-Series Party Positions from Texts. American Journal of Political Science, 52(3), 705–722. DOI ↗
AliasEvent data coding, Political event data, Conflict event data, CAMEO event codingWordfish text scaling, Poisson scaling of texts, Unsupervised text scaling, Wordfish position estimation
Apparentées34
RésuméEvent 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.Wordfish scaling is an unsupervised text-as-data method that estimates a single latent position for each political document — a party manifesto, a legislative speech, a press release — directly from its word frequencies, without any reference texts or hand coding. Introduced by Slapin and Proksch in 2008, it models word counts as draws from a Poisson distribution whose rate depends on a document position and word-specific parameters, recovering, for example, a left–right ordering of parties purely from how often each word appears in each text.
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ScholarGateComparer des méthodes: Event Data Analysis · Wordfish Scaling. Consulté le 2026-06-24 sur https://scholargate.app/fr/compare