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Comparison of geometric and arithmetic means for bandwidth selection in Nadaraya-Watson kernel regression estimator

机译:Nadaraya-Watson核回归估计器中用于带宽选择的几何和算术方法的比较

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Nadaraya-Watson kernel regression estimator (NWKRE) is a typical kernel regression estimator which is a kernel-based and non-parametric regression method to estimate the conditional expectation of a random variable and the non-linear mapping from input to output. For NWKRE, the selection of bandwidth, i.e., smoothing parameter h, plays a very important role in the fitting performance. In order to enhance the performance of NWKRE, an adaptive Nadaraya-Watson kernel regression estimator is proposed, ANWKRE for short. There are two main strategies to determine the adaptive or local bandwidth factor ??.: geometric mean and arithmetic mean based determination methods, respectively. In this paper, we firstly investigate the mathematical properties of geometric mean and arithmetic mean in the framework of regression analysis. Then, some experimental comparisons are conducted to demonstrate our theoretical results. The experimental results find that the arithmetic mean based ANWKRE can obtain a smoother regression estimation for unknown function.
机译:Nadaraya-Watson核回归估计器(NWKRE)是一种典型的核回归估计器,它是一种基于核的非参数回归方法,用于估计随机变量的条件期望以及从输入到输出的非线性映射。对于NWKRE,带宽的选择,即平滑参数h,在拟合性能中起着非常重要的作用。为了提高NWKRE的性能,提出了一种自适应的Nadaraya-Watson核回归估计器,简称ANWKRE。确定自适应或局部带宽因子的主要策略有两种:基于几何平均数和基于算术平均数的确定方法。本文首先在回归分析的框架下研究了几何平均数和算术平均数的数学性质。然后,进行一些实验比较以证明我们的理论结果。实验结果表明,基于算术平均值的ANWKRE可以为未知函数获得更平滑的回归估计。

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