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Local smoothing regression with functional data

机译:使用功能数据进行局部平滑回归

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Kernel estimates of a regression operator are investigated when the explanatory variable is of functional type. The bandwidths are locally chosen by a data-driven method based on the minimization of a functional version of a cross-validated criterion. A short asymptotic theoretical support is provided and the main body of this paper is devoted to various finite sample size applications. In particular, it is shown through some simulations, that a local bandwidth choice enables to capture some underlying heterogeneous structures in the functional dataset. As a consequence, the estimation of the relationship between a functional variable and a scalar response, and hence the prediction, can be significantly improved by using local smoothing parameter selection rather than global one. This is also confirmed from a chemometrical real functional dataset. These improvements are much more important than in standard finite dimensional setting.
机译:当解释变量为函数类型时,将研究回归算子的内核估计。带宽是根据交叉验证标准的功能版本的最小化,通过数据驱动方法本地选择的。提供了一个简短的渐近理论支持,并且本文的主体致力于各种有限样本量的应用。尤其是,通过一些模拟显示,局部带宽选择可以捕获功能数据集中的某些底层异构结构。结果,通过使用局部平滑参数选择而不是全局选择,可以显着改善对功能变量和标量响应之间的关系的估计以及由此的预测。这也从化学计量的实际功能数据集中得到了证实。这些改进比标准的有限尺寸设置重要得多。

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