Learning the Inverse Temperature of Ising Models under Hard Constraints using One Sample
arXiv:2509.20993v2 Announce Type: replace-cross Abstract: We consider the problem of estimating 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 $Pr(mathbf{sigma}) propto exp(betamathbf{sigma}^top Amathbf{sigma})$ with $A$ being the adjacency matrix of $G$. We […]