ArXiv TLDR

Approximate Operator Inversion for Average Effects in Nonlinear Panel Models

🐦 Tweet
2605.05037

Jad Beyhum, Geert Dhaene, Cavit Pakel, Martin Weidner

econ.EM

TLDR

Introduces Approximate Operator Inversion (AOI) for estimating average effects in nonlinear panel models, offering exponential bias reduction for moderate T.

Key contributions

  • Proposes Approximate Operator Inversion (AOI) for bias correction in nonlinear panel models.
  • AOI approximately inverts the likelihood mapping, offering a new bias correction perspective.
  • Demonstrates exponential convergence of bias in T, leading to strong finite-sample performance.
  • Establishes asymptotic normality and provides feasible inference methods.

Why it matters

This paper introduces a novel and highly effective method for estimating average effects in complex panel data. Its exponential bias reduction property means it performs well even with limited time series data, making it practical for many real-world applications.

Original Abstract

We study the estimation of average effects in nonlinear panel data models with fixed effects when the time dimension $T$ is only moderately large. Our approach, called approximate operator inversion (AOI), offers a new perspective on bias correction. Instead of first estimating unit-specific fixed effects and then correcting the resulting plug-in bias, AOI approximately inverts the likelihood-induced mapping from the fixed-effect distribution to the outcome distribution. AOI can be interpreted as the limit of an infinitely iterated bias correction scheme, and this limit is available in closed form. We show that the bias of the AOI estimator has a rate double robustness property and converges to zero at an exponential rate in $T$ under regularity conditions. Our asymptotic theory requires $T \to \infty$, but the exponential convergence rate of the bias means that finite-sample performance is very good even for moderately large $T$. We establish asymptotic normality and provide feasible 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.