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dc.contributor.authorMarquardt, Kyle L.
dc.contributor.authorPemstein, Daniel
dc.date.accessioned2018-12-17T08:09:11Z
dc.date.available2018-12-17T08:09:11Z
dc.date.issued2018
dc.identifier.urihttp://hdl.handle.net/2077/58454
dc.description.abstractModels for converting expert-coded data to point estimates of latent concepts assume different data-generating processes. In this paper, we simulate ecologically-valid data according to different assumptions, and examine the degree to which common methods for aggregating expert-coded data can recover true values and construct appropriate coverage intervals from these data. We find that hierarchical latent variable models and the bootstrapped mean perform similarly when variation in reliability and scale perception is low; latent variable techniques outperform the mean when variation is high. Hierarchical A-M and IRT models generally perform similarly, though IRT models are often more likely to include true values within their coverage intervals. The median and non-hierarchical latent variable modeling techniques perform poorly under most assumed data generating processes.sv
dc.description.sponsorshipEarlier drafts presented at the 2018 APSA, EPSA and V-Dem conferences. The authors thank Chris Fariss, John Gerring, Adam Glynn, Dean Lacy and Jeff Staton for their comments on earlier drafts of this paper. This material is based upon work supported by the National Science Foundation (SES-1423944, PI: Daniel Pemstein), Riksbankens Jubileumsfond (M13-0559:1, PI: Sta ffan I. Lindberg), the Swedish Research Council (2013.0166, PI: Staff an I. Lindberg and Jan Teorell); the Knut and Alice Wallenberg Foundation (PI: Staff an I. Lindberg) and the University of Gothenburg (E 2013/43), as well as internal grants from the Vice-Chancellor's o ffice, the Dean of the College of Social Sciences, and the Department of Political Science at University of Gothenburg. We performed simulations and other computational tasks using resources provided by the High Performance Computing section and the Swedish National Infrastructure for Computing at the National Supercomputer Centre in Sweden (SNIC 2017/1-406 and 2018/3-133, PI: Staff an I. Lindberg).sv
dc.language.isoengsv
dc.relation.ispartofseriesWorking Paperssv
dc.relation.ispartofseries2018:83sv
dc.titleEstimating Latent Traits from Expert Surveys: An Analysis of Sensitivity to Data Generating Processsv
dc.typeTextsv
dc.contributor.organizationV-Dem Institutesv


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