Iterative Thresholding Algorithm for Sparse Inverse Covariance Estimation

Rolfs, Benjamin, Rajaratnam, Bala, Guillot, Dominique, Wong, Ian, Maleki, Arian

Neural Information Processing Systems 

Sparse graphical modelling/inverse covariance selection is an important problem in machine learning and has seen significant advances in recent years. A major focus has been on methods which perform model selection in high dimensions. To this end, numerous convex $\ell_1$ regularization approaches have been proposed in the literature. It is not however clear which of these methods are optimal in any well-defined sense. A major gap in this regard pertains to the rate of convergence of proposed optimization methods.