An Affine Invariant k-Nearest Neighbor Regression Estimate
classification
🧮 math.ST
stat.TH
keywords
metricnearestaffineestimateinvariantneighborregressionunder
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We design a data-dependent metric in $\mathbb R^d$ and use it to define the $k$-nearest neighbors of a given point. Our metric is invariant under all affine transformations. We show that, with this metric, the standard $k$-nearest neighbor regression estimate is asymptotically consistent under the usual conditions on $k$, and minimal requirements on the input data.
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