The V-Dem Measurement Model: Latent Variable Analysis for Cross-National and Cross-Temporal Expert-Coded Data

27 Pages Posted: 18 Dec 2015 Last revised: 24 May 2016

See all articles by Daniel Pemstein

Daniel Pemstein

North Dakota State University; University of Gothenburg - V-Dem Institute

Kyle L. Marquardt

University of Bergen

Eitan Tzelgov

University of East Anglia (UEA)

Yi-ting Wang

National Cheng Kung University

Farhad Miri

University of Gothenburg - V-Dem Institute

Multiple version iconThere are 2 versions of this paper

Date Written: December 1, 2015

Abstract

The Varieties of Democracy (V-Dem) project relies on country experts who code a host of ordinal variables, providing subjective ratings of latent — that is, not directly observable — regime characteristics over time. Sets of around five experts rate each case (country-year observation), and each of these raters works independently. Since raters may diverge in their coding because of either differences of opinion or mistakes, we require systematic tools with which to model these patterns of disagreement. These tools allow us to aggregate ratings into point estimates of latent concepts and quantify our uncertainty around these point estimates. In this paper we describe item response theory models that can that account and adjust for differential item functioning (i.e. differences in how experts apply ordinal scales to cases) and variation in rater reliability (i.e. random error). We also discuss key challenges specific to applying item response theory to expert-coded cross-national panel data, explain the approaches that we use to address these challenges, highlight potential problems with our current framework, and describe long-term plans for improving our models and estimates. Finally, we provide an overview of the different forms in which we present model output.

Suggested Citation

Pemstein, Daniel and Marquardt, Kyle L. and Tzelgov, Eitan and Wang, Yi-ting and Miri, Farhad, The V-Dem Measurement Model: Latent Variable Analysis for Cross-National and Cross-Temporal Expert-Coded Data (December 1, 2015). V-Dem Working Paper 2015:21, Available at SSRN: https://ssrn.com/abstract=2704787 or http://dx.doi.org/10.2139/ssrn.2704787

Daniel Pemstein (Contact Author)

North Dakota State University ( email )

Fargo, ND 58105
United States

University of Gothenburg - V-Dem Institute ( email )

United States

Kyle L. Marquardt

University of Bergen ( email )

Muséplassen 1
N-5008 Bergen, +47 55 58
Norway

Eitan Tzelgov

University of East Anglia (UEA) ( email )

Norwich Research Park
Norwich, Norfolk NR4 7TJ
United Kingdom

Yi-ting Wang

National Cheng Kung University ( email )

No.1, University Road
Tainan
Taiwan

Farhad Miri

University of Gothenburg - V-Dem Institute ( email )

United States

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