AI RESEARCH
A computational phase transition for learning-to-sample from Ising models
arXiv CS.LG
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ArXi:2605.24752v1 Announce Type: new We study \emph{learning-to-sample} -- a basic algorithmic task underlying generative modeling -- for Ising models, a standard testbed for algorithmic ideas in both theoretical computer science and machine learning. Given i.i.d. samples of an unknown target distribution, the goal of learning-to-sample is to learn a computationally efficient generation procedure that produces new samples following approximately the same distribution.