非线性面板固定效应模型中偏差缩减的惩罚函数方法

A Penalty Function Approach to Bias Reduction in Nonlinear Panel Models with Fixed Effects

Journal of Business & Economic Statistics · 2009
被引 87
人大 AABS 4

中文导读

提出一种惩罚目标函数,用于减少短时间维度下非线性面板固定效应模型的估计偏差,方法简单且适用于多个个体特定参数,模拟和实证研究显示有效。

Abstract

AbstractWe consider estimation of nonlinear panel data models with individual specific fixed effects. Estimation of these models is complicated since estimation of the fixed effects when the time dimension is short generally results in inconsistent estimates of all model parameters. We present a penalized objective function that reduces the bias in the resulting point estimates. The penalty function is simple to construct and requires no modification for models with multiple individual specific parameters. We illustrate the approach through a series of simulations that suggest the approach is effective in reducing bias and in an empirical study of insider trading activity.KEY WORDS:: BiasFixed effectsIncidental parametersPanel data

固定效应非线性面板模型惩罚函数偏差校正