Generalization Analysis for Classification on Korobov Space

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Abstract
In this paper, the classification algorithm arising from Tikhonov regularization is discussed. The main intention is to derive learning rates for the excess misclassification error according to the convex -norm loss function , . Following the argument, the estimation of error under Tsybakov noise conditions is studied. In addition, we propose the rate of approximation of functions from Korobov space , , by the shallow ReLU neural network. This result consists of a novel Fourier analysis
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