Asymptotic slowing down of the nearest-neighbor classifier

Neural Information Processing Systems 

Although the value of the coefficient a depends upon the underlying probability distributions, the exponent of M is largely distri(cid:173) bution free. We thus obtain a concise relation between a classifier's ability to generalize from a finite reference sample and the dimensionality of the feature space, as well as an analytic validation of Bellman's well known "curse of dimensionality."