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arXiv 提交日期: 2026-06-22
📄 Abstract - Generalized nonparametric regression in reproducing kernel Hilbert spaces: Consistency and rates of convergence

We develop a comprehensive theory for regularized M-estimation in reproducing kernel Hilbert spaces. Under mild conditions on the loss we establish existence and measurability of the estimator, covering a wide range of convex and non-convex losses, including bounded robust losses. We further prove sharp rates of convergence with an explicit bias-variance decomposition governed by a novel complexity measure. We show that the variance is independent of misspecification, while the bias depends on a source condition parameter known in the learning literature. For tensor product Sobolev spaces we obtain new rates that connect to spaces of functions with dominating mixed smoothness, substantially extending existing results and explaining why these estimators circumvent the curse of dimensionality. Our methodology, combining elements from both functional analysis and empirical process theory, allows for an asymptotic linearisation of the objective function that avoids both closed-form solutions and global Lipschitz assumptions, and may be of independent interest. The estimators are implemented in C++ and theory is supported by numerical experiments.

顶级标签: theory machine learning
详细标签: reproducing kernel hilbert space regularized m-estimation rates of convergence nonparametric regression bias-variance decomposition 或 搜索:

再生核希尔伯特空间中的广义非参数回归:一致性与收敛速度 / Generalized nonparametric regression in reproducing kernel Hilbert spaces: Consistency and rates of convergence


1️⃣ 一句话总结

本文提出了一套适用于多种损失函数(包括非凸和鲁棒损失)的广义非参数回归理论,通过引入新的复杂度度量精确刻画了估计量的偏差-方差权衡,并证明该方法在张量积Sobolev空间中能有效避免维数灾难,理论和数值实验均支持其优越性。

源自 arXiv: 2606.22993