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Estimation and hypotheses testing in boundary regression models

机译:边界回归模型中的估计和假设测试

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摘要

Consider a nonparametric regression model with one-sided errors and regression function in a general Holder class. We estimate the regression function via minimization of the local integral of a polynomial approximation. We show uniform rates of convergence for the simple regression estimator as well as for a smooth version. These rates carry over to mean regression models with a symmetric and bounded error distribution. In such a setting, one obtains faster rates for irregular error distributions concentrating sufficient mass near the endpoints than for the usual regular distributions. The results are applied to prove asymptotic root n-equivalence of a residual-based (sequential) empirical distribution function to the (sequential) empirical distribution function of unobserved errors in the case of irregular error distributions. This result is remarkably different from corresponding results in mean regression with regular errors. It can readily be applied to develop goodness-of-fit tests for the error distribution. We present some examples and investigate the small sample performance in a simulation study. We further discuss asymptotically distribution-free hypotheses tests for independence of the error distribution from the points of measurement and for monotonicity of the boundary function as well.
机译:考虑一个非参数回归模型,在常规持有者类中具有单面错误和回归函数。我们通过最小化多项式近似的局部积分来估计回归函数。我们为简单回归估算器以及平滑版本显示统一的收敛速度。这些速率随身携带到具有对称和有界误差分布的平均回归模型。在这样的设置中,一个人获得更快的速率,以集中在端点附近的足够质量的不规则误差分布而不是通常的常规分布。结果用于将残余(顺序)经验分布函数的渐近根部N-等当量证明在不规则错误分布的情况下对(顺序)验证的未观察错误的经验分布函数。该结果与常规误差的平均回归相应的结果非常不同。它可以容易地应用于为错误分布开发拟合的健美测试。我们展示了一些示例并调查了模拟研究中的小样本性能。我们进一步讨论了无渐近的分布假设,用于从测量点和边界功能的单调性的误差分布的独立性。

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