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Split-panel Jackknife Estimation of Fixed-effect Models

机译:固定效应模型的分屏折刀估计

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Maximum-likelihood estimation of nonlinear models with fixed effects is subject to the incidental-parameter problem. This typically implies that point estimates suffer from large bias and confidence intervals have poor coverage. This article presents a jackknife method to reduce this bias and to obtain confidence intervals that are correctly centred under rectangular-array asymptotics. The method is explicitly designed to handle dynamics in the data, and yields estimators that are straightforward to implement and can be readily applied to a range of models and estimands. We provide distribution theory for estimators of model parameters and average effects, present validity tests for the jackknife, and consider extensions to higher-order bias correction and to two-step estimation problems. An empirical illustration relating to female labour-force participation is also provided.
机译:具有固定影响的非线性模型的最大似然估计受附带参数问题的影响。这通常意味着点估计会遭受较大的偏差,并且置信区间的覆盖率很差。本文提出了一种折刀方法,以减少这种偏差并获得在矩形阵列渐近线下正确居中的置信区间。该方法经过明确设计,可以处理数据中的动态变化,并产生易于实现的估算器,并且可以轻松应用于一系列模型和估算值。我们为模型参数和平均效果的估计量提供了分布理论,为折刀提供了有效性测试,并考虑了对高阶偏差校正和两步估计问题的扩展。还提供了与女性劳动力参与有关的经验说明。

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