Learning the Inverse Temperature of Ising Models Under Hard Constraints Using One Sample
Abstract
We consider the problem of estimating the inverse temperature parameter $\beta$ of an $n$-dimensional truncated Ising model using a single sample. Given a graph $G = (V,E)$ with $n$ vertices, a truncated Ising model is a probability distribution over the $n$-dimensional hypercube -1,1$^n$ where each configuration $\mathbf{\sigma}$ is constrained to lie in a truncation set $S \subseteq $ -1,1$^n$ and has probability $\Pr(\mathbf{\sigma}) \propto \exp(\beta\mathbf{\sigma}^\top A_G \mathbf{\sigma})$ with $A_G$ being the adjacency matrix of $G$. We adopt the recent setting of [Galanis et al. SODA'24], where the truncation set $S$ can be expressed as the set of satisfying assignments of a $k$-CNF formula. Given a single sample $\mathbf{\sigma}$ from a truncated Ising model, with inverse parameter $\beta^\*$, underlying graph $G$ of bounded degree $\Delta$ and $S$ being expressed as the set of satisfying assignments of a $k$-CNF formula, we design in nearly $\mathcal{O}(n)$ time an estimator $\hat{\beta}$ that is $\mathcal{O}(\Delta^3/\sqrt{n})$-consistent with the true parameter $\beta^\*$ for $k \gtrsim \log(d^2 k)\Delta^3.$ 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.
Cite
Text
Chauhan and Panageas. "Learning the Inverse Temperature of Ising Models Under Hard Constraints Using One Sample." International Conference on Learning Representations, 2026.Markdown
[Chauhan and Panageas. "Learning the Inverse Temperature of Ising Models Under Hard Constraints Using One Sample." International Conference on Learning Representations, 2026.](https://mlanthology.org/iclr/2026/chauhan2026iclr-learning/)BibTeX
@inproceedings{chauhan2026iclr-learning,
title = {{Learning the Inverse Temperature of Ising Models Under Hard Constraints Using One Sample}},
author = {Chauhan, Rohan and Panageas, Ioannis},
booktitle = {International Conference on Learning Representations},
year = {2026},
url = {https://mlanthology.org/iclr/2026/chauhan2026iclr-learning/}
}