An Improved Nearest Neighbour Classifier

04/27/2022
by   Eric Setterqvist, et al.
0

A windowed version of the Nearest Neighbour (WNN) classifier for images is described. While its construction is inspired by the architecture of Artificial Neural Networks, the underlying theoretical framework is based on approximation theory. We illustrate WNN on the datasets MNIST and EMNIST of images of handwritten digits. In order to calibrate the parameters of WNN, we first study it on the classical MNIST dataset. We then apply WNN with these parameters to the challenging EMNIST dataset. It is demonstrated that WNN misclassifies 0.42 of the images of EMNIST and therefore significantly outperforms predictions by humans and shallow ANNs that both have more than 1.3

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