ArXiv TLDR

Inference on Linear Regressions with Two-Way Unobserved Heterogeneity

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2605.06491

Hugo Freeman, Dennis Kristensen

econ.EM

TLDR

This paper introduces a new method for robust inference in linear panel data models with two-way unobserved heterogeneity.

Key contributions

  • Develops a general estimation and inference procedure for common parameters in panel data.
  • Uses Neyman orthogonal moment conditions for nonparametric regression functions.
  • Adjusts nonparametric regression estimators to prevent incidental parameter bias.
  • Proposes a novel two-step estimator for nonparametric functions and fixed effects.

Why it matters

This paper provides a robust and general method for estimating common parameters in complex panel data models. By addressing issues like incidental parameter bias and ensuring asymptotic normality, it significantly improves the reliability of inference in economic and social sciences.

Original Abstract

We develop a general estimation and inference procedure for the common parameters in linear panel data regression models with nonparametric two-way specification of unobserved heterogeneity. The procedure takes as input any first-step estimators of the nonparametric regression function and the fixed effects and relies on two key ingredients: First, we develop moment conditions for the common parameters that are Neyman orthogonal with respect to the nonparametric regression function. Second, we employ a novel adjustment of the nonparametric regression estimator so the estimated fixed effects do not generate incidental parameter biases. Together, these ensure that the resulting estimator of the common parameters is root-NT -- asymptotically normally distributed under weak conditions on the estimators of fixed effects and regression function. Next, we propose a novel two-step estimator of the nonparametric regression function and the fixed effects and verify that this particular estimator satisfies the conditions of our general theory. A numerical study shows that the proposed estimators perform well in finite samples.

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