Finite-Sample Distribution-Free Inference in Linear Median Regressions Under Heteroscedasticity and Non-Linear Dependence of Unknown Form

Elise Coudin, Jean-Marie Dufour
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引用次数: 31

Abstract

We construct finite-sample distribution-free tests and confidence sets for the parameters of a linear median regression, where no parametric assumption is imposed on the noise distribution. The set-up studied allows for non-normality, heteroscedasticity, non-linear serial dependence of unknown forms as well as for discrete distributions. We consider a mediangale structure--the median-based analogue of a martingale difference--and show that the signs of mediangale sequences follow a nuisance-parameter-free distribution despite the presence of non-linear dependence and heterogeneity of unknown form. We point out that a simultaneous inference approach in conjunction with sign transformations yield statistics with the required pivotality features--in addition to usual robustness properties. Monte Carlo tests and projection techniques are then exploited to produce finite-sample tests and confidence sets. Further, under weaker assumptions, which allow for weakly exogenous regressors and a wide class of linear dependence schemes in the errors, we show that the procedures proposed remain asymptotically valid. The regularity assumptions used are notably less restrictive than those required by procedures based on least absolute deviations (LAD). Simulation results illustrate the performance of the procedures. Finally, the proposed methods are applied to tests of the drift in the Standard and Poor's composite price index series (allowing for conditional heteroscedasticity of unknown form). Copyright (C) The Author(s). Journal compilation (C) Royal Economic Society 2009
异方差和未知形式非线性依赖下线性中位数回归的有限样本无分布推断
我们为线性中位数回归的参数构造了有限样本无分布检验和置信集,其中没有对噪声分布施加参数假设。所研究的设置允许非正态性,异方差,未知形式的非线性序列依赖以及离散分布。我们考虑一个中角结构——基于中值的鞅差分模拟——并表明中角序列的符号遵循无干扰参数分布,尽管存在非线性依赖和未知形式的异质性。我们指出,结合符号变换的同时推理方法产生具有所需枢纽性特征的统计数据——除了通常的鲁棒性特性。然后利用蒙特卡罗测试和投影技术来产生有限样本测试和置信集。此外,在较弱的假设下,允许弱外生回归量和误差中广泛的线性依赖方案,我们表明所提出的过程仍然是渐近有效的。使用的规则性假设明显比基于最小绝对偏差(LAD)的程序所要求的限制更少。仿真结果验证了该方法的有效性。最后,将所提出的方法应用于标准普尔综合价格指数系列的漂移测试(允许未知形式的条件异方差)。版权(C)作者(s)。期刊汇编(C)皇家经济学会2009
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