分位数
计量经济学
推论
协变量
分位数回归
失业
非参数统计
条件概率分布
数学
回归不连续设计
经济
统计
计算机科学
人工智能
经济增长
作者
Zhongjun Qu,Jungmo Yoon,Pierre Perron
摘要
Abstract We propose methods to estimate and conduct inference on conditional quantile processes for models with both nonparametric and (locally or globally) linear components. We derive their asymptotic properties, optimal bandwidths, and uniform confidence bands over quantiles allowing for robust bias correction. Our framework covers the sharp regression discontinuity design, which is used to study the effects of unemployment insurance benefits extensions, focusing on heterogeneity over quantiles and covariates. We show economically strong effects in the tails of the outcome distribution. They reduce the within-group inequality, but can be viewed as enhancing between-group inequality, although helping to bridge the gender gap.
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