THESIS 8215Two topics in unsupervised learning are reviewed and developed; namely, model-based clustering and association rule mining. A new family of Gaussian mixture models, with a parsim onious covariance structure, is introduced. The mixtures of factor analysers and mixtures of principal component analysers models are special cases of this new family of models. This family exhibit the feature that their number of covariance parameters grows linearly with the dimensionality of the data, which leads to relatively fast computation time. These models perform excellently, compared to popular model-based clustering techniques, when applied to real data. A new family of Gaussian mixture models with a Cholesky-decomposed covariance structure is...