平均导数与差异的核估计

Kernel Estimation of Average Derivatives and Differences

Journal of Business & Economic Statistics · 2005
被引 10
人大 AABS 4

中文导读

提出一种新的非参数估计量:平均差异估计量,用于估计平均导数和差异,适用于有界和离散解释变量,无需高阶核函数,并基于CPS数据估计了不同职业的工资函数平均导数。

Abstract

In this article we consider the problem of estimating average derivatives and differences using kernel estimators. Our analysis focuses on developing new methods that are appropriate in the context of bounded and discrete regressors and do not require higher-order kernels for consistency or asymptotic normality. We derive a new nonparametric estimator that we call the average difference estimator. We show that this estimator is consistent and root-N asymptotically normally distributed. Furthermore, the average difference estimator converges to the well-known average derivative estimator as the increment used to compute the difference converges to 0. To illustrate the properties of our estimator, we provide some evidence from a Monte Carlo experiment. We also consider an application that focuses on estimating derivatives of earning functions using repeated cross-sectional data from the Current Population Survey (CPS) for a number of narrowly defined occupations. We find that the average difference estimator yields plausible estimates for the average derivative of the earnings functions with respect to hours worked in all subsamples of the CPS considered in this article.

平均导数估计平均差分估计核估计非参数估计