2023
DOI: 10.1088/2632-2153/acf041
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Error scaling laws for kernel classification under source and capacity conditions

Abstract: In this manuscript we consider the problem of kernel classification. While worst-case bounds on the decay rate of the prediction error with the number of samples are known for some classifiers, they often fail to accurately describe the learning curves of real data sets. In this work, we consider the important class of data sets satisfying the standard source and capacity conditions, comprising a number of real data sets as we show numerically. Under the Gaussian design, we derive the decay rates for the miscl… Show more

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