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Bayesian bandwidth estimation for a functional nonparametric regression model with mixed types of regressors and unknown error density

机译:混合类型的回归变量和未知误差密度的功能性非参数回归模型的贝叶斯带宽估计

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摘要

We investigate the issue of bandwidth estimation in a functional nonparametric regression model with function-valued, continuous real-valued and discrete-valued regressors under the framework of unknown error density. Extending from the recent work of Shang (2013) ['Bayesian Bandwidth Estimation for a Nonparametric Functional Regression Model with Unknown Error Density', Computational Statistics & Data Analysis, 67, 185-198], we approximate the unknown error density by a kernel density estimator of residuals, where the regression function is estimated by the functional Nadaraya-Watson estimator that admits mixed types of regressors. We derive a likelihood and posterior density for the bandwidth parameters under the kernel-form error density, and put forward a Bayesian bandwidth estimation approach that can simultaneously estimate the bandwidths. Simulation studies demonstrated the estimation accuracy of the regression function and error density for the proposed Bayesian approach. Illustrated by a spectroscopy data set in the food quality control, we applied the proposed Bayesian approach to select the optimal bandwidths in a functional nonparametric regression model with mixed types of regressors.
机译:我们在未知误差密度的框架下,研究了具有函数值,连续实值和离散值回归函数的功能性非参数回归模型中的带宽估计问题。从Shang(2013)的最新工作[“具有未知误差密度的非参数功能回归模型的贝叶斯带宽估计”,计算统计与数据分析,67,185-198]的扩展中,我们通过内核密度近似未知误差密度。残差估计量,其中回归函数由允许混合类型的回归变量的函数Nadaraya-Watson估计量估计。我们导出了核形式误差密度下带宽参数的似然性和后验密度,并提出了一种可以同时估计带宽的贝叶斯带宽估计方法。仿真研究证明了提出的贝叶斯方法的回归函数和误差密度的估计精度。通过食品质量控制中的光谱数据集进行说明,我们应用了拟议的贝叶斯方法在混合类型回归变量的功能性非参数回归模型中选择最佳带宽。

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