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Prediction of functional data with spatial dependence: a penalized approach

机译:具有空间依赖性的功能数据预测:一种惩罚方法

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摘要

This paper is focus on spatial functional variables whose observations are a set of spatially correlated sample curves obtained as realizations of a spatio-temporal stochastic process. In this context, as alternative to other geostatistical techniques (kriging, kernel smoothing, among others), a new method to predict the curves of temporal evolution of the process at unsampled locations and also the surfaces of geographical evolution of the variable at unobserved time points is proposed. In order to test the good performance of the proposed method, two simulation studies and an application with real climatological data have been carried out. Finally, the results were compared with ordinary functional kriging.
机译:本文关注的是空间功能变量,其观察结果是一组空间相关的样本曲线,这些样本曲线是通过实现时空随机过程而获得的。在这种情况下,作为其他地统计学技术(克里金法,核平滑法等)的替代方法,一种新方法可预测未采样位置处过程的时间演化曲线以及未观察到的时间点处变量的地理演化表面被提议。为了测试该方法的良好性能,已经进行了两次模拟研究以及具有实际气候数据的应用程序。最后,将结果与普通功能克里金法进行比较。

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