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Working paper 17. NOV 2008

Unobserved Heterogeneity in the Binary Logit Model with Cross-Sectional Data and Short Panels

A Finite Mixture Approach

Authors:

  • Anders Holm
  • Mads Meier Jæger
  • Morten Pedersen
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This paper proposes a new approach to dealing with unobserved heterogeneity in applied research using the binary logit model with cross-sectional data and short panels. Unobserved heterogeneity is particularly important in non-linear regression models such as the binary logit model because, unlike in linear regression models, estimates of the effects of observed independent variables are biased even when omitted independent variables are uncorrelated with the observed independent variables. We propose an extension of the binary logit model based on a finite mixture approach in which we conceptualize the unobserved heterogeneity via latent classes. Simulation results show that our approach leads to considerably less bias in the estimated effects of the independent variables than the standard logit model. Furthermore, because identification of the unobserved heterogeneity is weak when the researcher has cross-sectional rather than panel data, we propose a simple approach that fixes latent class weights and improves identification and estimation. Finally, we illustrate the applicability of our new approach using Canadian survey data on public support for redistribution.

Authors

  • Anders HolmMads Meier JægerMorten Pedersen

About this publication

  • Publisher

    SFI - Det Nationale Forskningscenter for Velfærd
VIVE – The Danish Centre for Social Science Research provides knowledge that contributes to developing the welfare society and strengthening quality development, efficiency enhancement and governance in the public sector, both in municipalities, regions and nationally.
Tel: +45 44 45 55 00
E-mail: vive@vive.dk
EAN: 5798000354845
CVR: 23 15 51 17