
How many countries for multilevel modeling? A comparison of frequentist and bayesian approaches
Researchers in comparative research increasingly use multilevel models to test effects of country-level factors on individual behavior and preferences. However, the asymptotic justification of widely employed estimation strategies presumes large samples and applications in comparative politics routinely involve only a small number of countries. Thus, researchers and reviewers often wonder if these models are applicable at all. In other words, how many countries do we need for multilevel modeling? I present results from a large-scale Monte Carlo experiment comparing the performance of multilevel models when few countries are available. I find that maximum likelihood estimates and confidence intervals can be severely biased, especially in models including cross-level interactions. In contrast, the Bayesian approach proves to be far more robust and yields considerably more conservative tests. ©2013, Midwest Political Science Association.
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- Political Science & Public Administration
- 4408 Political science
- 4407 Policy and administration
- 3801 Applied economics
- 1606 Political Science
- 1402 Applied Economics
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Published In
DOI
EISSN
ISSN
Publication Date
Volume
Issue
Start / End Page
Related Subject Headings
- Political Science & Public Administration
- 4408 Political science
- 4407 Policy and administration
- 3801 Applied economics
- 1606 Political Science
- 1402 Applied Economics