Common correlated effects estimation of nonlinear panel data models
Liang Chen and
Minyuan Zhang
The Econometrics Journal, 2025, vol. 28, issue 2, 295-317
Abstract:
SummaryThis paper focuses on estimating the coefficients and average partial effects of observed regressors in nonlinear panel data models with interactive fixed effects, using the common correlated effects framework. The proposed two-step estimation method involves applying principal component analysis to estimate the latent factors based on cross-sectional averages of the regressors in the first step, and jointly estimating the coefficients of the regressors and the factor loadings in the second step. The asymptotic distributions of the proposed estimators are derived under general conditions, assuming that the number of time-series observations is comparable to the number of cross-sectional observations. To correct for asymptotic biases of the estimators, we introduce both analytical and split-panel jackknife methods, and confirm their good performance in finite samples using Monte Carlo simulations. Finally, the proposed method is used to study the arbitrage behaviour of nonfinancial firms across different security markets.
Keywords: Bias correction; incidental parameters; interactive fixed effects; nonlinear models; panel data (search for similar items in EconPapers)
Date: 2025
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Persistent link: https://EconPapers.repec.org/RePEc:oup:emjrnl:v:28:y:2025:i:2:p:295-317.
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