Shape constrained estimators in inverse regression models with convolution-type operator

M. Birke, N. Bissantz
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引用次数: 2

Abstract

In this paper we are concerned with shape restricted estimation in inverse regression problems with convolution-type operator. We use increasing rearrangements to compute increasingand convex estimates from an (in principle arbitrary) unconstrained estimate of the unknown regression function. An advantage of our approach is that it is not necessary that prior shape information is known to be valid on the complete domain of the regression function. Instead, it is sufficient if it holds on some compact interval. A simulation study shows that the shape restricted estimate on the respective interval is significantly less sensitive to moderate undersmoothing than the unconstrained estimate, which substantially improves applicability of estimates based on data-driven bandwidth estimators. Finally, we demonstrate the application of the increasing estimator by the estimation of the luminosity profile of an elliptical galaxy. Here, a major interest is in reconstructing the central peak of the profile, which, due to its small size, requires to select the bandwidth as small as possible.
带卷积算子的逆回归模型的形状约束估计
本文研究了卷积型算子逆回归问题中的形状受限估计问题。我们使用递增重排来从未知回归函数的(原则上任意的)无约束估计中计算递增和凸估计。我们的方法的一个优点是,它不需要先验形状信息是已知的有效的完整域上的回归函数。相反,如果它在某个紧区间上成立,它就是充分的。仿真研究表明,在相应区间上的形状受限估计对中度欠平滑的敏感性明显低于无约束估计,这大大提高了基于数据驱动的带宽估计的适用性。最后,通过对椭圆星系光度分布的估计,说明了渐增估计的应用。这里,主要的兴趣是重建轮廓的中心峰,由于它的小尺寸,需要选择尽可能小的带宽。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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