In this paper, we apply the median-of-means principle to derive robust versions of local averaging rules in non-parametric regression. For various estimates, including nearest neighbors and kernel procedures, we obtain non-asymptotic exponential inequalities, with only a second moment assumption on the noise. We then show that these bounds cannot be significantly improved by establishing a corresponding lower bound on tail probabilities.
翻译:在本文中,我们运用中位法原则在非参数回归中得出稳健的本地平均规则版本。 对于各种估算,包括最近的邻居和内核程序,我们获得了非无症状指数性不平等,仅用第二秒钟的假设就得出了噪音。 然后我们证明,通过设定相应的尾巴概率下限,这些界限无法大大改进。