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首页> 外文期刊>Journal of Econometrics >Finite Sample Inference for Quantile Regression Models.
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Finite Sample Inference for Quantile Regression Models.

机译:分位数回归模型的有限样本推断。

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Under minimal assumptions, finite sample confidence bands for quantile regression models can be constructed. These confidence bands are based on the "conditional pivotal property" of estimating equations that quantile regression methods solve and provide valid finite sample inference for linear and nonlinear quantile models with endogenous or exogenous covariates. The confidence regions can be computed using Markov Chain Monte Carlo (MCMC) methods. We illustrate the finite sample procedure through two empirical examples: estimating a heterogeneous demand elasticity and estimating heterogeneous returns to schooling. We find pronounced differences between asymptotic and finite sample confidence regions in cases where the usual asymptotics are suspect.
机译:在最小假设下,可以构建分位数回归模型的有限样本置信带。这些置信带基于分位数回归方法解决具有内生或外生协变量的线性和非线性分位数模型的估计方程的“条件关键属性”,并为其提供有效的有限样本推论。可以使用马尔可夫链蒙特卡洛(MCMC)方法来计算置信区域。我们通过两个经验示例来说明有限样本过程:估算异质需求弹性和估算异质教育收益。我们发现在通常的渐近性被怀疑的情况下,渐近和有限样本置信区域之间存在明显差异。

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