局部线性Peters-Belson回归的核函数

M. Bolbolian Ghalibaf
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引用次数: 0

摘要

确定不同人群(例如种族或性别)之间的差距程度(如果有的话)在许多领域都很重要,包括医疗和疾病预防方面的公共卫生,或在涉及同工同酬的歧视案件中,以估计少数族裔和多数族裔雇员之间的薪酬差距。在多数/优势群体(AG)和少数/弱势群体(DG)之间观察到的平均结果的差异可能是由于相关协变量分布的差异。彼得斯·贝尔森(PB)方法拟合了一个带有协变量的回归模型,以预测每个DG成员的结果,就好像他们来自AG一样。DG成员的平均预测结果和平均观察结果之间的差异是(无法解释的)兴趣差异。PB回归是统计匹配的一种形式,在精神上类似于Bhattacharya的带宽匹配。在本文中,我们回顾了Hikawa等人(2010b)在法律案例中对PB回归的使用。描述了PB回归的参数和非参数方法,并表明在非参数PB回归中可以更好地选择核函数,即通过选择合适的核函数我们可以减少估计器的偏差和方差,也可以提高检验的能力。
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Kernel Function in Local Linear Peters-Belson Regression
Determining the extent of a disparity, if any, between groups of people, for example, race or gender, is of interest in many fields, including public health for medical treatment and prevention of disease or in discrimination cases concerning equal pay to estimate the pay disparities between minority and majority employees. An observed difference in the mean outcome between a majority/advantaged group (AG) and minority/disadvantaged group (DG) can be due to differences in the distribution of relevant covariates. The Peters Belson (PB) method fits a regression model with covariates to the AG to predict, for each DG member, their outcome measure as if they had been from the AG. The difference between the mean predicted and the mean observed outcomes of DG members is the (unexplained) disparity of interest. PB regression is a form of statistical matching, akin in spirit to Bhattacharya's band-width matching. In this paper we review the use of PB regression in legal cases from Hikawa et al. (2010b) Parametric and nonparametric approaches to PB regression are described and we show that in nonparametric PB regression choose a kernel function can be better resulted, i.e. by selecting the appropriate kernel function we can reduce bias and variance of estimators, also increase power of test.
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