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arxiv: 1905.10764 · v1 · pith:HPOQTGERnew · submitted 2019-05-26 · 🧮 math.ST · stat.TH

Lepskii Principle in Supervised Learning

classification 🧮 math.ST stat.TH
keywords errorkernellearninglepskiiprinciplereproducingsupervisedadaptive
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In the setting of supervised learning using reproducing kernel methods, we propose a data-dependent regularization parameter selection rule that is adaptive to the unknown regularity of the target function and is optimal both for the least-square (prediction) error and for the reproducing kernel Hilbert space (reconstruction) norm error. It is based on a modified Lepskii balancing principle using a varying family of norms.

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