Estimation of Group Structures in Panel Models with Individual Fixed Effects

Enno Mammen, Ralf Wilke, Kristina Zapp

Research output: Working paperResearch

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Abstract

The fixed effects (FE) panel model is one of the main econometric tools in empirical economic research. A major practical limitation is that the parameters on time-constant covariates are not identifiable. This paper presents a new approach to grouping FE in the linear panel model to reduce their dimensionality and ensure identifiability. By using unsupervised nonparametric density based clustering, cluster patterns including their location and number are not restricted. The approach works with large data structures (units and groups) and only clusters units that are sufficiently similar, while leaving others as unclustered atoms. Asymptotic theory and rates of convergence are presented. With the help of simulations and an application to economic data it is shown that the suggested method performs well and gives more insightful and efficient results than conventional panel models.
Original languageEnglish
Place of PublicationMannheim
PublisherLeibnitz Centre for European Economic Research (ZEW)
Number of pages57
DOIs
Publication statusPublished - Jun 2022
SeriesZEW Discussion Papers
Number22-023

Keywords

  • Panel data
  • Statistical learning
  • Regularisation
  • Endogeneity

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