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Robust Priors in Nonlinear Panel Models with Individual and Time Effects

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  • Zizhong Yan
  • Zhengyu Zhang
  • Mingli Chen
  • Jingrong Li
  • Iv'an Fern'andez-Val

Abstract

We develop likelihood-based bias reduction for nonlinear panel models with additive individual and time effects. In two-way panels, integrated-likelihood corrections are attractive but challenging because the required integration is high dimensional and standard Laplace approximations may fail when the parameter dimension grows with the sample size. We propose a target-centered full-exponential Laplace--cumulant expansion that exploits the sparse higher-order derivative structure implied by additive effects, delivering a tractable approximation with a negligible remainder under large-$N,T$ asymptotics. The expansion motivates robust priors that yield bias reduction for both common parameters and fixed effects. We provide implementations for binary, ordered, and multinomial response models with two-way effects. For average partial effects, we show that the remaining first-order bias has a simple variance form and can be removed by a closed-form adjustment. Monte Carlo experiments and an empirical illustration show substantial bias reduction with accurate inference.

Suggested Citation

  • Zizhong Yan & Zhengyu Zhang & Mingli Chen & Jingrong Li & Iv'an Fern'andez-Val, 2026. "Robust Priors in Nonlinear Panel Models with Individual and Time Effects," Papers 2604.03663, arXiv.org.
  • Handle: RePEc:arx:papers:2604.03663
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    File URL: http://arxiv.org/pdf/2604.03663
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