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Scaling Data from Multiple Sources

Published online by Cambridge University Press:  23 November 2020

Ted Enamorado*
Affiliation:
Assistant Professor, Department of Political Science, Washington University in St. Louis, St. Louis, MO63130, USA. Email: ted@wustl.edu, URL: http://www.tedenamorado.com
Gabriel López-Moctezuma
Affiliation:
Assistant Professor, Division of the Humanities and Social Sciences, California Institute of Technology, Pasadena, CA91125, USA. Email: glmoctezuma@caltech.edu, URL: http://glmoctezuma.com
Marc Ratkovic
Affiliation:
Assistant Professor, Department of Politics, Princeton University, Princeton, NJ08544, USA. Email: ratkovic@princeton.edu, URL: http://www.princeton.edu/~ratkovic
*
Corresponding author Ted Enamorado

Abstract

We introduce a method for scaling two datasets from different sources. The proposed method estimates a latent factor common to both datasets as well as an idiosyncratic factor unique to each. In addition, it offers a flexible modeling strategy that permits the scaled locations to be a function of covariates, and efficient implementation allows for inference through resampling. A simulation study shows that our proposed method improves over existing alternatives in capturing the variation common to both datasets, as well as the latent factors specific to each. We apply our proposed method to vote and speech data from the 112th U.S. Senate. We recover a shared subspace that aligns with a standard ideological dimension running from liberals to conservatives, while recovering the words most associated with each senator’s location. In addition, we estimate a word-specific subspace that ranges from national security to budget concerns, and a vote-specific subspace with Tea Party senators on one extreme and senior committee leaders on the other.

Type
Article
Copyright
© The Author(s) 2020. Published by Cambridge University Press on behalf of the Society for Political Methodology

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Footnotes

Edited by Betsy Sinclair

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