The FisherEM package provides an efficient algorithm for the unsupervised classification of high-dimensional data. This FisherEM algorithm models and clusters the data in a discriminative and low-dimensional latent subspace. It also provides a low-dimensional representation of the clustered data.
Charles Bouveyron, Camille Brunet (2012), "Simultaneous model-based clustering and visualization in the Fisher discriminative subspace.",
Statistics and Computing, 22(1), 301-324.
Charles Bouveyron, Camille Brunet (2012), "Discriminative variable selection for clustering with the sparse Fisher-EM algorithm",
preprint Hal n-00685183.