Skip to main navigation Skip to main content Skip to page footer

Journal Article

A Bayesian Approach to Model-Based Clustering for Binary Panel Probit Models

Authors

  • Aßmann
  • C.
  • Boysen-Hogrefe
  • J.

Publication Date

JEL Classification

C11 C23 C25

Key Words

Bayesian Estimation

MCMC Methods

Mixture Modelling

Panel Probit Model

Considering latent heterogeneity is of special importance in non-linear models in order to

gauge correctly the effect of explanatory variables on the dependent variable. A stratified modelbased clustering approach is adapted for modeling latent heterogeneity in binary panel probit

models. Within a Bayesian framework an estimation algorithm dealing with the inherent label

switching problem is provided. Determination of the number of clusters is based on the marginal

likelihood and a cross-validation approach. A simulation study is conducted to assess the ability

of both approaches to determine on the correct number of clusters indicating high accuracy for

the marginal likelihood criterion, with the cross validation approach performing similarly well

in most circumstances. Different concepts of marginal effects incorporating latent heterogeneity

at different degrees arise within the considered model setup and are directly at hand within

Bayesian estimation via MCMC methodology. An empirical illustration of the methodology

developed indicates that consideration of latent heterogeneity via latent clusters provides the

preferred model specification over a pooled and a random coefficient specification.

Kiel Institute Expert

  • Prof. Dr. Jens Boysen-Hogrefe
    Kiel Institute Researcher

More Publications

Subject Dossiers

  • Production site fully automatic with robot arms

    Economic Outlook

  • Inside shoot of the cupola of the Reichstag, the building of the German Bundestag.

    Economic Policy in Germany

  • Colorful flags of European countires in front of an official EU building.

    Tension within the European Union

Research Center

  • Macroeconomics