RT info:eu-repo/semantics/article T1 Improving the computational performance of TCLUST through ensemble initialization A1 Álvarez Esteban, Pedro César A1 García Escudero, Luis Ángel A1 Mayo Iscar, Agustín A1 Crespo Guerrero, Javier K1 Cluster analysis K1 Robustness K1 Trimming K1 Model-based clustering K1 62H30 K1 62H11 K1 62G35 AB Outliers are known to be detrimental to widely used clustering techniques. Robust clustering alternatives have been introduced to better resist outlying observations. Among these, robust clustering methods based on trimming have proven effective by allowing the removal of a fraction of observations where outliers are likely to be found, with TCLUST being one of the most popular for handling elliptically contoured clusters.The algorithm for applying TCLUST can be seen as an extension of the concentration steps used in the fast-MCD algorithm for computing the Minimum Covariance Determinant. However, obtaining good initializations for these concentration steps in TCLUST is more complex than in MCD. This initialization task is particularly challenging unless both the number of clusters and the dimensionality are small. To address this, a new ensemble initialization procedure for TCLUST will be presented, which takes advantage of partially correct information from all iterated random initializations rather than focusing solely on the best individual one found. Initial experiments suggest that this methodology could improve the computational performance of the standard TCLUST algorithm. PB Springer Nature SN 1862-5347 YR 2025 FD 2025 LK https://uvadoc.uva.es/handle/10324/75789 UL https://uvadoc.uva.es/handle/10324/75789 LA eng NO Adv Data Anal Classif (2025). https://doi.org/10.1007/s11634-025-00642-9 NO Producción Científica DS UVaDOC RD 25-may-2025