RT info:eu-repo/semantics/article T1 Robust clustering based on trimming A1 García Escudero, Luis Ángel A1 Mayo Iscar, Agustín K1 clustering K1 model-based clustering K1 robustness K1 trimming K1 1209 Estadística AB Clustering is one of the most widely used unsupervised learning techniques. However, it is well-known that outliers can have a significantly adverse impact on commonly applied clustering methods. On the other hand, clustered outliers can be particularly detrimental to (even robust) statistical procedures. Therefore, it makes sense to combine concepts from Robust Statistics and Cluster Analysis to deal with both clusters and outliers simultaneously through robust clustering approaches. Among the existing robust clustering techniques, we focus on those that rely on (impartial) trimming. Trimming offers the user an easy interpretation, as standard well-known clustering methods are applied after a fraction of the potentially most outlying observations is removed. This trimming approach, when combined with appropriate constraints on the clusters' dispersion parameters, has shown a good performance and can be implemented efficiently thorough available algorithms. PB Wiley SN 1939-5108 YR 2024 FD 2024 LK https://uvadoc.uva.es/handle/10324/72570 UL https://uvadoc.uva.es/handle/10324/72570 LA eng NO WIREs Computational Statistics, 2024, vol. 16, n. 4, e1658 NO Producción Científica DS UVaDOC RD 10-abr-2025