Constrained Sampling for Language Models Should Be Easy: An MCMC Perspective
Abstract
Constrained decoding enables Language Models (LMs) to produce samples that provably satisfy hard constraints. However, existing constrained-decoding approaches often distort the underlying model distribution, a limitation that is especially problematic in applications like program fuzzing, where one wants to generate diverse and valid program inputs for testing purposes. We propose a new constrained sampling framework based on Markov Chain Monte Carlo (MCMC) that simultaneously satisfies three core desiderata: constraint satisfying (every sample satisfies the constraint), monotonically converging (the sampling process converges to the true conditional distribution), and efficient (high-quality samples emerge in few steps). Our method constructs a proposal distribution over valid outputs and applies a Metropolis-Hastings acceptance criterion based on the LM's likelihood, ensuring principled and efficient exploration of the constrained space. Empirically, our sampler outperforms existing methods on both synthetic benchmarks and real-world program fuzzing tasks.
Cite
@article{arxiv.2506.05754,
title = {Constrained Sampling for Language Models Should Be Easy: An MCMC Perspective},
author = {Emmanuel Anaya Gonzalez and Sairam Vaidya and Kanghee Park and Ruyi Ji and Taylor Berg-Kirkpatrick and Loris D'Antoni},
journal= {arXiv preprint arXiv:2506.05754},
year = {2025}
}