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NOTES AND PROBLEMS NONSTANDARD QUANTILE-REGRESSION INFERENCE

机译:注释和问题非标准量化回归

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It is well known that conventional Wald-type inference in the context of quantile regression is complicated by the need to construct estimates of the conditional densities of the response variables at the quantile of interest. This note explores the possibility of circumventing the need to construct conditional density estimates in this context with scale statistics that are explicitly inconsistent for the underlying conditional densities. This method of studentization leads conventional test statistics to have limiting distributions that are nonstandard but have the convenient feature of depending explicitly on the user's choice of smoothing parameter. These limiting distributions depend on the distribution of the conditioning variables but can be straightforwardly approximated by resampling.
机译:众所周知,在分位数回归的情况下,传统的Wald型推论由于需要在目标分位数处构造响应变量的条件密度的估计而变得复杂。本说明探讨了在这种情况下使用与基础条件密度明显不一致的规模统计量来构造条件密度估计的需求的可能性。这种学生化方法导致常规测试统计数据具有非标准的限制分布,但具有方便的功能,即明确取决于用户对平滑参数的选择。这些限制分布取决于条件变量的分布,但可以通过重采样直接近似。

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