Optimal Sparse Linear Encoders and Sparse PCA

Neural Information Processing Systems 

Principal components analysis (PCA) is the optimal linear encoder of data. Sparse linear encoders (e.g., sparse PCA) produce more interpretable features that can promote better generalization.