A Monte Carlo sample size study: how many countries are needed for accurate multilevel SEM?

Authors

  • Bart Meuleman University of Leuven
  • Jaak Billiet University of Leuven

DOI:

https://doi.org/10.18148/srm/2009.v3i1.666

Keywords:

multilevel SEM, sample size, Monte Carlo study, cross-national research

Abstract

Recently, there has been growing scientific interest for cross-national survey research. Various scholars have used multilevel techniques to link individual characteristics to aspects of the national context. At first sight, multilevel SEM seems to be a promising tool for this purpose, as it integrates multilevel modeling within a latent variable framework. However, due to the fact that the number of countries in most international surveys does not exceed 30, the application of multilevel SEM in cross-national research is problematic. Taking European Social Survey (ESS) data as a point of departure, this paper uses Monte Carlo studies to assess the estimation accuracy of multilevel SEM with small group sample sizes. The results indicate that a group sample size of 20 - a situation common in cross-national research - does not guarantee accurate estimation at all. Unacceptable amounts of parameter and standard error bias are present for the between-level estimates. Unless the standardized effect is very large (0.75), statistical power for detecting a significant between-level structural effect is seriously lacking. Required group sample sizes depend strongly on the specific interests of the researcher, the expected effect sizes and the complexity of the model. If the between-level model is relatively simple and one is merely interested in the between-level factor structure, a group sample size of 40 could be sufficient. To detect large (>0.50) structural effects at the between level, at least 60 groups are required. To have an acceptable probability of detecting smaller effects, more than 100 groups are needed. These guidelines are shown to be quite robust for varying cluster sizes and intra-class correlations (ICCs).

Author Biographies

Bart Meuleman, University of Leuven

Bart Meuleman obtained his master’s degrees in Sociology and Statistics. As a fellow of the Fund for Scientific Research-Flanders, he is connected to the Centre for Sociological Research (CeSO) of the Katholieke Universiteit Leuven, Belgium. His main research interests involve attitude research and cross-cultural comparisons. Recent work is published in International Migration Review, European Sociological Review and Acta Politica.

Jaak Billiet, University of Leuven

Jaak Billiet is an Emeritus professor in social methodology at the Katholieke Universiteit Leuven, Belgium, head of the Centre for Sociological Research (CESO) and a member of the central co-ordination team of the European Social Survey. He also plays a central role in the implementation of the fourth wave of the European Value Study in 2008. His research interests deal with validity assessment, interviewer and response effects, modelling of measurement error in social surveys, ethnocentrism, political attitudes and religious orientations. Recent publications are in Quality & Quantity, Journal of Cross-Cultural Psychology, and Political Psychology.

Downloads

Published

2009-03-30

How to Cite

Meuleman, B., & Billiet, J. (2009). A Monte Carlo sample size study: how many countries are needed for accurate multilevel SEM?. Survey Research Methods, 3(1), 45–58. https://doi.org/10.18148/srm/2009.v3i1.666

Issue

Section

Articles

Similar Articles

<< < 10 11 12 13 14 15 16 17 18 19 > >> 

You may also start an advanced similarity search for this article.