Nonparametric regression models offer a way to understand and quantify relationships between variables without having to identify an appropriate family of possible regression functions. Although many estimation methods for these models have been proposed in the literature, most of them can be highly sensitive to the presence of a small proportion of atypical observations in the training set. In this paper we review outlier robust estimation methods for nonparametric regression models, paying particular attention to practical considerations. Since outliers can also influence negatively the regression estimator by affecting the selection of bandwidths or smoothing parameters, we also discuss available robust alternatives for this task. Finally, since using many of the ``classical'' nonparametric regression estimators (and their robust counterparts) can be very challenging in settings with a moderate or large number of explanatory variables, we review recent robust nonparametric regression methods that scale well with a growing number of covariates.
翻译:非对称回归模型为理解和量化变量之间的关系提供了一种方法,而不必确定可能的回归函数的适当组合。虽然文献中已经为这些模型提出了许多估算方法,但其中多数方法对于培训数据集中存在少量非典型观测可能非常敏感。在本文件中,我们审查非对称回归模型的超强估算方法,特别注意实际考虑。由于外部关系还可以通过影响带宽选择或平滑参数对回归估计值产生消极影响,我们也讨论这项任务的可靠替代方法。最后,由于使用许多“古典”非对称回归估计值(及其强效对应方)在有中度或大量解释变量的情况下可能非常具有挑战性,我们审查最近的稳健的非对称回归计算方法,这些方法与越来越多的共变数相比,规模相当。