In this paper, we study the estimation of the derivative of a regression function in a standard univariate regression model. The estimators are defined either by derivating nonparametric least-squares estimators of the regression function or by estimating the projection of the derivative. We prove two simple risk bounds allowing to compare our estimators. More elaborate bounds under a stability assumption are then provided. Bases and spaces on which we can illustrate our assumptions and first results are both of compact or non compact type, and we discuss the rates reached by our estimators. They turn out to be optimal in the compact case. Lastly, we propose a model selection procedure and prove the associated risk bound. To consider bases with a non compact support makes the problem difficult.
翻译:在本文中,我们研究了在标准单向回归模型中回归函数衍生物的估算。估计值的确定方法要么是得出回归函数非对称最小方的估测值,要么是估计衍生物的预测值。我们证明有两个简单的风险界限,可以比较我们的估算值。然后提供了稳定假设下的更详尽的界限。我们可以用来说明我们的假设和初步结果的基础和空间是紧凑的或非紧凑的,我们讨论我们的估算值所达到的比率。在契约中,它们最终证明是最佳的。最后,我们提出一个示范选择程序,并证明相关的风险是约束的。用非契约支持来考虑基础使得问题变得困难。