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      Minimax Rate Optimal Adaptive Nearest Neighbor Classification and Regression

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          Abstract

          k Nearest Neighbor (kNN) method is a simple and popular statistical method for classification and regression. For both classification and regression problems, existing works have shown that, if the distribution of the feature vector has bounded support and the probability density function is bounded away from zero in its support, the convergence rate of the standard kNN method, in which k is the same for all test samples, is minimax optimal. On the contrary, if the distribution has unbounded support, we show that there is a gap between the convergence rate achieved by the standard kNN method and the minimax bound. To close this gap, we propose an adaptive kNN method, in which different k is selected for different samples. Our selection rule does not require precise knowledge of the underlying distribution of features. The new proposed method significantly outperforms the standard one. We characterize the convergence rate of the proposed adaptive method, and show that it matches the minimax lower bound.

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          Author and article information

          Journal
          22 October 2019
          Article
          1910.10513
          7045f496-3ddf-4dac-99ee-acc3769e4bcb

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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          Custom metadata
          math.ST cs.LG stat.ML stat.TH

          Machine learning,Artificial intelligence,Statistics theory
          Machine learning, Artificial intelligence, Statistics theory

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