Croux, Christophe; Filzmoser, Peter; Fritz, Heinrich - 2011
A method for principal component analysis is proposed that is sparse and robust at the same time. The sparsity delivers principal components that have loadings on a small number of variables, making them easier to interpret. The robustness makes the analysis resistant to outlying observations....