ArXiv TLDR

Factor-Augmented Panel Regressions and Variance-Weighted Treatment Effects

🐦 Tweet
2604.18078

Artūras Juodis, Martin Weidner

econ.EM

TLDR

This paper shows that factor-augmented panel regressions consistently estimate variance-weighted average treatment effects under nonparametric assumptions.

Key contributions

  • Reinterprets factor-augmented panel regressions through variance-weighted average treatment effects.
  • Shows two-way panel estimators (e.g., interactive fixed effects) converge to interpretable estimands nonparametrically.
  • Proves these estimators consistently estimate the same variance-weighted average of unit-time-specific treatment effects.
  • Highlights that weights are proportional to the conditional variance of the regressor given unobserved factors.

Why it matters

This paper provides a new nonparametric interpretation for widely used factor-augmented panel regression models. By showing these models estimate variance-weighted treatment effects, it clarifies their estimands and strengthens their theoretical foundation. This work is crucial for researchers applying these methods in econometrics and other fields.

Original Abstract

We revisit panel regressions with unobserved heterogeneity through the lens of variance-weighted average treatment effects. Building on established results for cross-sectional OLS and one-way fixed effects panels, we show that two-way panel estimators with latent factors, specifically the principal components estimator of Greenaway-McGrevy, Han and Sul (2012) and the interactive fixed effects estimator of Bai (2009), also converge to interpretable estimands under fully nonparametric assumptions. Both estimators consistently estimate the same variance-weighted average of unit-time-specific treatment effects, where the weights are proportional to the conditional variance of the regressor given the unobserved heterogeneity. The result requires the number of estimated factors to grow with the sample size and applies to the single regressor case. We discuss the challenges that arise when extending to multiple regressors and to inference.

📬 Weekly AI Paper Digest

Get the top 10 AI/ML arXiv papers from the week — summarized, scored, and delivered to your inbox every Monday.