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Ideal Point Estimation×Wordfish×Wordscores×
TieteenalaPolitical SciencePsykometriikkaPsykometriikka
MenetelmäperheLatent structureLatent structureLatent structure
Syntyvuosi200420082003
KehittäjäClinton, Jackman & Rivers (Bayesian formulation); Poole & Rosenthal (spatial tradition)Jonathan Slapin, Svenja-Sophia ProkschMichael Laver, Kenneth Benoit, John Garry
TyyppiLatent-variable spatial model of binary choice dataGenerative text model for dimension reductionText analysis and dimension reduction
AlkuperäislähdeClinton, J., Jackman, S., & Rivers, D. (2004). The Statistical Analysis of Roll Call Data. American Political Science Review, 98(2), 355–370. DOI ↗Slapin, J. B., & Proksch, S. O. (2008). A scaling model for estimating time-series party positions from texts. Journal of Politics, 70(3), 554-569. DOI ↗Laver, M., Benoit, K., & Garry, J. (2003). Extracting policy positions from political texts using words as data. American Political Science Review, 97(2), 311-331. DOI ↗
RinnakkaisnimetIdeal point model, Item response theory for roll calls, Spatial voting model, Bayesian ideal points
Liittyvät455
TiivistelmäIdeal point estimation recovers the latent policy positions — ideal points — of political actors from their observed binary choices, most often legislators' yea/nay votes on roll calls. Building on the spatial theory of voting and formalized as a Bayesian item-response model by Clinton, Jackman, and Rivers in 2004, it places each legislator and each bill in a low-dimensional policy space and estimates positions so that the probability a legislator votes yea increases as the bill's 'yea' outcome moves closer to that legislator's ideal point.Wordfish is a statistical model for scaling documents on latent dimensions, developed by Slapin and Proksch (2008). Unlike reference-based methods like Wordscores, Wordfish uses a Poisson generative model to jointly estimate word frequencies and document positions without requiring reference texts or manual annotation. It is particularly useful for estimating time-series changes in policy positions and can scale documents from multiple languages simultaneously.Wordscores is a text-based scaling method developed by Laver, Benoit, and Garry (2003) that estimates the policy positions of political actors based on word frequencies in their texts. By comparing word usage in reference texts of known positions with test texts, the method infers the latent political dimension of any document without requiring manual coding or training data.
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ScholarGateVertaile menetelmiä: Ideal Point Estimation · Wordfish · Wordscores. Haettu 2026-06-25 osoitteesta https://scholargate.app/fi/compare