We propose a novel family of multivariate robust smoothers based on the thin-plate (Sobolev) penalty that is particularly suitable for the analysis of spatial data. The proposed family of estimators can be expediently computed even in high dimensions, is invariant with respect to rigid transformations of the coordinate axes and can be shown to possess optimal theoretical properties under mild assumptions. The competitive performance of the proposed thin-plate spline estimators relative to its non-robust counterpart is illustrated in a simulation study and a real data example involving two-dimensional geographical data on ozone concentration.
翻译:我们提议建立一个基于薄板(Sobolev)处罚的多变强稳健滑动新式体系,特别适合空间数据分析。拟议的估算器组合即使在高维上也可以快速计算,对于坐标轴的僵硬变形是无差别的,在轻度假设下可以显示具有最佳的理论属性。一个模拟研究和一个真实的数据实例,其中涉及关于臭氧浓度的二维地理数据,说明了拟议的薄板样板测量器相对于非紫外线对应器的竞争性性能。