2022
DOI: 10.3390/math10152743
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An Ensemble and Iterative Recovery Strategy Based kGNN Method to Edit Data with Label Noise

Abstract: Learning label noise is gaining increasing attention from a variety of disciplines, particularly in supervised machine learning for classification tasks. The k nearest neighbors (kNN) classifier is often used as a natural way to edit the training sets due to its sensitivity to label noise. However, the kNN-based editor may remove too many instances if not designed to take care of the label noise. In addition, the one-sided nearest neighbor (NN) rule is unconvincing, as it just considers the nearest neighbors f… Show more

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