Gibrat’s law and quantile regressions: An application to firm growth

Roberta Distante, Ivan Petrella, Emiliano Santoro

12 Citations (Scopus)

Abstract

The nexus between firm growth, size and age in U.S. manufacturing is examined through the lens of quantile regression models. This methodology allows us to overcome serious shortcomings entailed by linear regression models employed by much of the existing literature, unveiling a number of important properties. Size pushes both low and high performing firms towards the median rate of growth, while age is never advantageous, and more so as firms are relatively small and grow faster. These findings support theoretical generalizations of Gibrat’s law that allow size to affect the variance of the growth process, but not its mean (Cordoba, 2008).
Original languageEnglish
JournalEconomics Letters
Volume164
Pages (from-to)5-9
ISSN0165-1765
DOIs
Publication statusPublished - Mar 2018

Keywords

  • Faculty of Social Sciences
  • Firm growth
  • Size
  • Age
  • Conditional quantiles

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