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首页> 外文期刊>Econometric Theory >BOOTSTRAP AND k-STEP BOOTSTRAP BIAS CORRECTIONS FOR THE FIXED EFFECTS ESTIMATOR IN NONLINEAR PANEL DATA MODELS
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BOOTSTRAP AND k-STEP BOOTSTRAP BIAS CORRECTIONS FOR THE FIXED EFFECTS ESTIMATOR IN NONLINEAR PANEL DATA MODELS

机译:非线性面板数据模型中固定效应估计量的BOOTSTRAP和k-STEP BOOTSTRAP BIAS校正

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摘要

Because of the incidental parameters problem, the fixed effects maximum likelihood estimator in a nonlinear panel data model is in general inconsistent when the time series length T is short and fixed. Even if T approaches infinity but at a rate not faster than the cross sectional sample size n, the fixed effects estimator is still asymptotically biased. This paper proposes using the standard bootstrap and k-step bootstrap to correct the bias. We establish the asymptotic validity of the bootstrap bias corrections for both model parameters and average marginal effects. Our results apply to static models as well as some dynamic Markov models. Monte Carlo simulations show that our procedures are effective in reducing the bias of the fixed effects estimator and improving the coverage accuracy of the associated confidence interval.
机译:由于附带参数的问题,当时间序列长度T短且固定时,非线性面板数据模型中的固定效应最大似然估计器通常是不一致的。即使T接近无穷大,但速率不超过横截面样本大小n,固定效果估计量仍会渐近偏置。本文提出使用标准自举和k阶自举来校正偏差。我们建立了模型参数和平均边际效应的自举偏差校正的渐近有效性。我们的结果适用于静态模型以及一些动态马尔可夫模型。蒙特卡洛模拟显示,我们的程序可有效减少固定效应估计量的偏差并提高相关置信区间的覆盖范围。

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