2021
DOI: 10.48550/arxiv.2110.14148
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Uniform Concentration Bounds toward a Unified Framework for Robust Clustering

Abstract: Recent advances in center-based clustering continue to improve upon the drawbacks of Lloyd's celebrated k-means algorithm over 60 years after its introduction. Various methods seek to address poor local minima, sensitivity to outliers, and data that are not well-suited to Euclidean measures of fit, but many are supported largely empirically. Moreover, combining such approaches in a piecemeal manner can result in ad hoc methods, and the limited theoretical results supporting each individual contribution may no … Show more

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