Grouped Heterogeneity in Linear Panel Data Models with Heterogeneous Error Variances

  • Jhordano Aguilar Loyo (Creator)
  • Tom Boot (Creator)

Dataset

Description

We develop a procedure to identify latent group structures in linear panel data models that exploits a grouping in the error variances of cross-sectional units. To accommodate such grouping, we introduce an objective function that avoids a singularity that arises in a pseudolikelihood approach. We provide theoretical and numerical evidence showing when allowing for variance groups improves classification. The developed procedure provides new evidence on the relation between firm-level research and development (R&D) investments and the business cycle. We find a well-defined group structure in the variances that ex-post can be related to firm size. Our estimates indicate stronger procyclical investment patterns at medium-size firms compared to large firms.
Date made available4-Mar-2024
Publisherfigshare

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