Artificial Intelligence

OneBatchPAM: A Fast and Frugal K-Medoids Algorithm

Publié le - Proceedings of the AAAI Conference on Artificial Intelligence

Auteurs : Antoine de Mathelin, Nicolas Enrique Cecchi, François Deheeger, Mathilde Mougeot, Nicolas Vayatis

This paper proposes a novel k-medoids approximation algorithm to handle large-scale datasets with reasonable computational time and memory complexity. We develop a local-search algorithm that iteratively improves the medoid selection based on the estimation of the k-medoids objective. A single batch of size m