A Bayesian Multilevel Modeling Approach to Time-Series Cross-Sectional Data
17 Pages Posted: 12 Aug 2009 Last revised: 15 Jul 2013
Date Written: 2007
Abstract
The analysis of time-series cross-sectional (TSCS) data has become increasingly popular in political science. Meanwhile, political scientists are also becoming more interested in the use of multilevel models (MLM). However, little work exists to understand the benefits of multilevel modeling when applied to TSCS data. We employ Monte Carlo simulations to benchmark the performance of a Bayesian multilevel model for TSCS data. We find that the MLM performs as well or better than other common estimators for such data. Most importantly, the MLM is more general and offers researchers additional advantages.
Keywords: methodology, TSCS data
Suggested Citation: Suggested Citation
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