Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

GLAD: Learning Sparse Graph Recovery

About

Recovering sparse conditional independence graphs from data is a fundamental problem in machine learning with wide applications. A popular formulation of the problem is an $\ell_1$ regularized maximum likelihood estimation. Many convex optimization algorithms have been designed to solve this formulation to recover the graph structure. Recently, there is a surge of interest to learn algorithms directly based on data, and in this case, learn to map empirical covariance to the sparse precision matrix. However, it is a challenging task in this case, since the symmetric positive definiteness (SPD) and sparsity of the matrix are not easy to enforce in learned algorithms, and a direct mapping from data to precision matrix may contain many parameters. We propose a deep learning architecture, GLAD, which uses an Alternating Minimization (AM) algorithm as our model inductive bias, and learns the model parameters via supervised learning. We show that GLAD learns a very compact and effective model for recovering sparse graphs from data.

Harsh Shrivastava, Xinshi Chen, Binghong Chen, Guanghui Lan, Srinvas Aluru, Han Liu, Le Song• 2019

Related benchmarks

TaskDatasetResultRank
Graph ReconstructionScale-free BA (test)--
6
Graph ReconstructionRandom sparse (ER) (test)--
6
Graph ReconstructionCommunity SBM (test)--
6
Graph ReconstructionSmall-world (WS) (test)--
6
Showing 4 of 4 rows

Other info

Follow for update