Sparse Logistic Regression Learns All Discrete Pairwise Graphical Models

October 28, 2018 ยท Declared Dead ยท ๐Ÿ› Neural Information Processing Systems

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Authors Shanshan Wu, Sujay Sanghavi, Alexandros G. Dimakis arXiv ID 1810.11905 Category cs.LG: Machine Learning Cross-listed cs.DS, math.ST, stat.ML Citations 54 Venue Neural Information Processing Systems Last Checked 3 months ago
Abstract
We characterize the effectiveness of a classical algorithm for recovering the Markov graph of a general discrete pairwise graphical model from i.i.d. samples. The algorithm is (appropriately regularized) maximum conditional log-likelihood, which involves solving a convex program for each node; for Ising models this is $\ell_1$-constrained logistic regression, while for more general alphabets an $\ell_{2,1}$ group-norm constraint needs to be used. We show that this algorithm can recover any arbitrary discrete pairwise graphical model, and also characterize its sample complexity as a function of model width, alphabet size, edge parameter accuracy, and the number of variables. We show that along every one of these axes, it matches or improves on all existing results and algorithms for this problem. Our analysis applies a sharp generalization error bound for logistic regression when the weight vector has an $\ell_1$ constraint (or $\ell_{2,1}$ constraint) and the sample vector has an $\ell_{\infty}$ constraint (or $\ell_{2, \infty}$ constraint). We also show that the proposed convex programs can be efficiently solved in $\tilde{O}(n^2)$ running time (where $n$ is the number of variables) under the same statistical guarantees. We provide experimental results to support our analysis.
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