The Minimax Learning Rates of Normal and Ising Undirected Graphical Models
Abstract
Let G be an undirected graph with m edges and d vertices. We show that d-dimensional Ising models on G can be learned from n i.i.d. samples within expected total variation distance some constant factor of \1, (m + d)/n\, and that this rate is optimal. We show that the same rate holds for the class of d-dimensional multivariate normal undirected graphical models with respect to G. We also identify the optimal rate of \1, m/n\ for Ising models with no external magnetic field.
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