A Unified Approach to Learning Ising Models: Beyond Independence and Bounded Width
Jason Gaitonde, Elchanan Mossel

TL;DR
This paper demonstrates that a simple node-wise logistic regression approach can effectively learn Ising models in various complex settings beyond traditional assumptions, including dynamic data, spin glasses, and adversarial dynamics.
Contribution
It extends the applicability of logistic regression for Ising model learning to new scenarios where previous assumptions do not hold, with provable guarantees.
Findings
Optimal sample complexity for dynamic data from local Markov chains.
Successful parameter recovery in high-temperature regimes of spin glasses.
Exponential improvement in sample efficiency for certain data regimes.
Abstract
We revisit the problem of efficiently learning the underlying parameters of Ising models from data. Current algorithmic approaches achieve essentially optimal sample complexity when given i.i.d. samples from the stationary measure and the underlying model satisfies "width" bounds on the total interaction involving each node. We show that a simple existing approach based on node-wise logistic regression provably succeeds at recovering the underlying model in several new settings where these assumptions are violated: (1) Given dynamically generated data from a wide variety of local Markov chains, like block or round-robin dynamics, logistic regression recovers the parameters with optimal sample complexity up to factors. This generalizes the specialized algorithm of Bresler, Gamarnik, and Shah [IEEE Trans. Inf. Theory'18] for structure recovery in bounded degree…
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Taxonomy
TopicsMarkov Chains and Monte Carlo Methods · Bayesian Modeling and Causal Inference · Complex Network Analysis Techniques
MethodsLogistic Regression
