BIG & QUIC: Sparse Inverse Covariance Estimation for a Million Variables
Hsieh, Cho-Jui, Sustik, Matyas A., Dhillon, Inderjit S., Ravikumar, Pradeep K., Poldrack, Russell
–Neural Information Processing Systems
The l1-regularized Gaussian maximum likelihood estimator (MLE) has been shown to have strong statistical guarantees in recovering a sparse inverse covariance matrix even under high-dimensional settings. However, it requires solving a difficult non-smooth log-determinant program with number of parameters scaling quadratically with the number of Gaussian variables. State-of-the-art methods thus do not scale to problems with more than 20,000 variables. In this paper, we develop an algorithm BigQUIC, which can solve 1 million dimensional l1-regularized Gaussian MLE problems (which would thus have 1000 billion parameters) using a single machine, with bounded memory. In order to do so, we carefully exploit the underlying structure of the problem. Our innovations include a novel block-coordinate descent method with the blocks chosen via a clustering scheme to minimize repeated computations; and allowing for inexact computation of specific components. In spite of these modifications, we are able to theoretically analyze our procedure and show that BigQUIC can achieve super-linear or even quadratic convergence rates.
Neural Information Processing Systems
Dec-31-2013
- Country:
- North America > United States > Texas (0.14)
- Genre:
- Research Report > Promising Solution (0.34)