19
4

Ising Model Selection Using 1\ell_{1}-Regularized Linear Regression: A Statistical Mechanics Analysis

Abstract

We theoretically analyze the typical learning performance of 1\ell_{1}-regularized linear regression (1\ell_1-LinR) for Ising model selection using the replica method from statistical mechanics. For typical random regular graphs in the paramagnetic phase, an accurate estimate of the typical sample complexity of 1\ell_1-LinR is obtained. Remarkably, despite the model misspecification, 1\ell_1-LinR is model selection consistent with the same order of sample complexity as 1\ell_{1}-regularized logistic regression (1\ell_1-LogR), i.e., M=O(logN)M=\mathcal{O}\left(\log N\right), where NN is the number of variables of the Ising model. Moreover, we provide an efficient method to accurately predict the non-asymptotic behavior of 1\ell_1-LinR for moderate M,NM, N, such as precision and recall. Simulations show a fairly good agreement between theoretical predictions and experimental results, even for graphs with many loops, which supports our findings. Although this paper mainly focuses on 1\ell_1-LinR, our method is readily applicable for precisely characterizing the typical learning performances of a wide class of 1\ell_{1}-regularized MM-estimators including 1\ell_1-LogR and interaction screening.

View on arXiv
Comments on this paper