Short panel data quantile regression model with flexible correlated effects
收藏DataCite Commons2025-06-02 更新2025-09-08 收录
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https://tandf.figshare.com/articles/dataset/Short_panel_data_quantile_regression_model_with_flexible_correlated_effects/29209199/1
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I propose an alternative linear model for short panel data quantile regression. The model assumes a nonparametric correlated effect (CE) that is <i>τ</i>-quantile-specific and time-invariant. The resulting partially linear model provides inference robust to misspecification, and it is characterized as a best linear approximation to the truth under a generalized correlated random effect assumption. At the cost of modeling the individual heterogeneity, the model is free of incidental parameters, and it does not restrict within-group dependence of idiosyncratic errors at all. The modeled heterogeneity is still well-aligned with the fixed effect approach in the linear mean regression model. For estimation, sieve-approximated CE is regularized by nonconvex penalization which enjoys the oracle property against ultra-high dimensionality. Unpenalized sieve estimation is also available. As an empirical application, the proposed method is used to estimate the distributional effect of smoking on birth weights. Using a dataset where fixed effects quantile regression is computationally infeasible, the method yields more refined estimates compared to the one based on a linear CE.
提供机构:
Taylor & Francis
创建时间:
2025-06-02



