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GEE estimation of the covariance structure of a bivariate panel data model with an application to wage dynamics and the incidence of profit-sharing in West Germany

机译:GEE估计的双变量面板数据模型的协方差结构及其在西德的工资动态和利润分享的发生率中的应用

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摘要

We propose a generalized estimating equations (GEE) approach to the estimation of the mean and covariance structure of bivariate time series processes of panel data. The one-step approach allows for mixed continuous and discrete dependent variables. A Monte Carlo Study is presented to compare our particular GEE estimator with more standard GEE-estimators. In the empirical illustration, we apply our estimator to the analysis of individual wage dynamics and the incidence of profit-sharing in West Germany. Our findings show that time-invariant unobserved individual ability jointly influences individual wages and participation in profit sharing schemes.
机译:我们提出了一种广义估计方程(GEE)方法来估计面板数据的二元时间序列过程的均值和协方差结构。一步方法允许混合连续和离散因变量。提出了蒙特卡洛研究,以将我们特定的GEE估算器与更标准的GEE估算器进行比较。在实证说明中,我们将估计量应用于西德的个人工资动态和利润分享的发生率的分析。我们的发现表明,随时间变化的未观察到的个人能力共同影响着个人工资和参与利润共享计划。

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