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Hybrid local polynomial wavelet shrinkage: wavelet regression with automatic boundary adjustment

机译:混合局部多项式小波收缩:具有自动边界调整的小波回归

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摘要

An usual assumption underlying the use of wavelet shrinkage is that the regression function is assumed to be either periodic or symmetric. However, such an assumption is not always realistic. This paper proposes an effective method for correcting the boundary bias introduced by the inappropriateness of such periodic or symmetric assumption. The idea is to combine wavelet shrinkage with local polynomial regression, where the latter regression technique is known to possess excellent boundary properties. Simulation results from both the univariate and bivariate settings provide strong evidence that the proposed method is extremely effective in terms of correcting boundary bias.
机译:使用小波收缩的通常假设是,回归函数被假定为周期性或对称的。但是,这种假设并不总是现实的。本文提出了一种有效的方法来校正由这种周期性或对称假设的不适当性引起的边界偏差。想法是将小波收缩与局部多项式回归相结合,其中已知后者的回归技术具有出色的边界特性。单变量和双变量设置的仿真结果提供了有力的证据,表明所提出的方法在校正边界偏差方面非常有效。

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