C.A. Micchelli, W.L. Miranker
Journal of the ACM
Discovering the graph structure of a Gaus- sian Markov Random Field is an important problem in application areas such as com- putational biology and atmospheric sciences. This task, which translates to estimating the sparsity pattern of the inverse covariance ma- trix, has been extensively studied in the lit- erature. However, the existing approaches are unable to handle ultra-high dimensional datasets and there is a crucial need to de- velop methods that are both highly scal- able and memory-efficient. In this paper, we present GINCO, a blocked greedy method for sparse inverse covariance matrix estima- tion. We also present detailed description of a highly-scalable and memory-efficient imple- mentation of GINCO, which is able to oper- ate on both shared- and distributed-memory architectures. Our implementation is able re- cover the sparsity pattern of 25, 000 vertex random and chain graphs with 87% and 84% accuracy in ≤ 5 minutes using ≤ 10GB of memory on a single 8-core machine. Fur- thermore, our method is statistically consis- tent in recovering the sparsity pattern of the inverse covariance matrix, which we demon- strate through extensive empirical studies.
C.A. Micchelli, W.L. Miranker
Journal of the ACM
Conrad Albrecht, Jannik Schneider, et al.
CVPR 2025
S. Winograd
Journal of the ACM
Fahiem Bacchus, Joseph Y. Halpern, et al.
IJCAI 1995