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Smoothing parameter selection method for multiresponse nonparametric regression model using smoothing spline and Kernel estimators approaches

机译:使用平滑样条和内核估计方法对多态非参数回归模型进行平滑参数选择方法

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The principle problem in multiresponse nonparametric regression model is how we estimate the regression functions which draw association between some dependent (response) variables and some independent (predictor) variables where there are correlations between responses. There are many techniques used to estimate the regression function. Two of them are spline and kernel smoothing techniques. Speaking about smoothing techniques, not only in uniresponse spline and kernel nonparametric regression models but also in multiresponse spline and kernel nonparametric regression models, the estimations of regression functions depend on smoothing parameters. In the privious researches the covariance matrices were assumed to be known. Matrix of covariance is not assumed known in this research. The goals of this research are selecting of optimal smoothing parameters for the model we consider through spline and kernel smoothing techniques. Optimal smoothing parameters can be obtained by taking the solution to generalized cross validation (GCV) optimization problem. The obtained results of this research are the optimal smoothing parameter for smoothing spline estimator approach and the optimal smoothing parameter namely optimal bandwidth for kernel estimator approach.
机译:MultiShyse非参数回归模型中的原理问题是我们如何估计绘制某些依赖(响应)变量与某些独立(预测)变量之间关联的回归函数,其中响应之间存在相关性。有许多技术用于估计回归函数。其中两个是样条曲线和核平滑技术。谈到平滑技术,不仅在不响应的样条和内核非参数回归模型中,还在多态曲调和内核非参数回归模型中,回归函数的估计取决于平滑参数。在恐惧研究中,假设协方差矩阵已知。本研究中已知协方差矩阵。该研究的目标是选择通过样条曲线和内核平滑技术的模型的最佳平滑参数。可以通过将解决方案置于广义交叉验证(GCV)优化问题来获得最佳平滑参数。该研究的获得结果是用于平滑样条估计器方法的最佳平滑参数,以及用于内核估计方法的最佳平滑参数即最佳带宽。

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