On Model Selection Consistency of Lasso for High-Dimensional Ising
Models on Tree-like Graphs
Abstract
We consider the problem of high-dimensional Ising model selection using neighborhood-based least absolute shrinkage and selection operator (Lasso). It is rigorously proved that under some mild coherence conditions on the population covariance matrix of the Ising model, consistent model selection can be achieved with sample sizes for any tree-like graph in the paramagnetic phase, where is the number of variables and is the maximum node degree. The obtained sufficient conditions for consistent model selection with Lasso are the same in the scaling of the sample complexity as that of -regularized logistic regression.
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