Support Union Recovery in Meta Learning of Gaussian Graphical Models

22 Jun 2020Qian ZhangYilin ZhengJean Honorio

In this paper we study Meta learning of Gaussian graphical models. In our setup, each task has a different true precision matrix, each with a possibly different support (i.e., set of edges in the graph)... (read more)

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