Non-Asymptotic Uniform Rates of Consistency for k-NN Regression
classification
📊 stat.ML
cs.LG
keywords
regressionratesconsistencyuniformadaptsapplyassumptionsautomatically
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We derive high-probability finite-sample uniform rates of consistency for $k$-NN regression that are optimal up to logarithmic factors under mild assumptions. We moreover show that $k$-NN regression adapts to an unknown lower intrinsic dimension automatically. We then apply the $k$-NN regression rates to establish new results about estimating the level sets and global maxima of a function from noisy observations.
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