ICLR2026
Learning the Inverse Temperature of Ising Models under Hard Constraints using One Sample
Rohan Chauhan, Ioannis Panageas
1 citation
Abstract
We consider the problem of estimating the inverse temperature parameter of an -dimensional truncated Ising model using a single sample. Given a graph with vertices, a truncated Ising model is a probability distribution over the -dimensional hypercube -1,1 where each configuration is constrained to lie in a truncation set -1,1 and has probability with being the adjacency matrix of . We adopt the recent setting of [Galanis et al. SODA'24], where the truncation set can be expressed as the set of satisfying assignments of a -CNF formula. Given a single sample from a truncated Ising model, with inverse parameter , underlying graph of bounded degree and being expressed as the set of satisfying assignments of a -CNF formula, we design in nearly time an estimator that is -consistent with the true parameter for
Our estimator is based on the maximization of the pseudolikelihood, a notion that has received extensive analysis for various probabilistic models without [Chatterjee, Annals of Statistics '07] or with truncation [Galanis et al. SODA '24]. Our approach generalizes recent techniques from [Daskalakis et al. STOC '19, Galanis et al. SODA '24], to confront the more challenging setting of the truncated Ising model.