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Distribution function estimation by constrained polynomial spline regression

机译:约束多项式样条回归的分布函数估计

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摘要

A smooth monotone polynomial spline (PS) estimator is proposed for the cumulative distribution function. The proposed method applies a constrained PS regression to smooth the empirical distribution function, while simultaneously ensures monotonicity by imposing a set of linear constraints on the coefficients of the PS functions. This feature is not shared by its kernel counterpart in [Cheng, M.Y., and Peng, L. (2002), 'Regression Modeling for Nonparametric Estimation of Distribution and Quantile Functions', Statixtica Sinica, 12, 1043-1060], as the kernel estimator is not necessarily monotone. Under mild assumptions, both L_2 and uniform convergence rates are obtained. Our simulation studies show that the proposed estimator has better finite sample performance than the simple empirical distribution function. We also illustrate the use of the proposed method by analysing two real data examples.
机译:针对累积分布函数,提出了一种光滑的单调多项式样条(PS)估计器。所提出的方法应用了约束PS回归来平滑经验分布函数,同时通过对PS函数的系数施加一组线性约束来确保单调性。此功能在内核[Cheng,MY,and Peng,L.(2002),“用于分布和分位数函数的非参数估计的回归建模”,Statixtica Sinica,12,1043-1060)中没有被内核共享。估计量不一定是单调的。在温和的假设下,可以获得L_2和一致的收敛速度。我们的仿真研究表明,与简单的经验分布函数相比,所提出的估计器具有更好的有限样本性能。我们还通过分析两个真实数据示例来说明所提出方法的使用。

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