Jan. 1, 2023, midnight | Tengyuan Liang, Benjamin Recht

JMLR www.jmlr.org

This paper provides elementary analyses of the regret and generalization of minimum-norm interpolating classifiers (MNIC). The MNIC is the function of smallest Reproducing Kernel Hilbert Space norm that perfectly interpolates a label pattern on a finite data set. We derive a mistake bound for MNIC and a regularized variant that holds for all data sets. This bound follows from elementary properties of matrix inverses. Under the assumption that the data is independently and identically distributed, the mistake bound implies that …

classifiers data data set data sets distributed elementary function kernel matrix mistakes paper rate set solution space

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