数学
离群值
估计员
核希尔伯特再生空间
非参数统计
稳健性(进化)
应用数学
样本量测定
统计
核回归
非参数回归
核(代数)
弱收敛
回归
收敛速度
稳健回归
希尔伯特空间
计算机科学
离散数学
数学分析
化学
资产(计算机安全)
频道(广播)
基因
生物化学
计算机安全
计算机网络
标识
DOI:10.1016/j.jco.2023.101744
摘要
To achieve robustness against the outliers or heavy-tailed sampling distribution, we consider an Ivanov regularized empirical risk minimization scheme associated with a modified Huber's loss for nonparametric regression in reproducing kernel Hilbert space. By tuning the scaling and regularization parameters in accordance with the sample size, we develop nonasymptotic concentration results for such an adaptive estimator. Specifically, we establish the best convergence rates for prediction error when the conditional distribution satisfies a weak moment condition.
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