Reheated Gradient-Based Discrete Sampling for Combinatorial Optimization
Abstract
Recently, gradient-based discrete sampling has emerged as a highly efficient, general-purpose solver for various combinatorial optimization (CO) problems, achieving performance comparable to or surpassing the popular data-driven approaches. However, we identify a critical issue in these methods, which we term ``wandering in contours''. This behavior refers to sampling new different solutions that share very similar objective values for a long time, leading to computational inefficiency and suboptimal exploration of potential solutions. In this paper, we introduce a novel reheating mechanism inspired by the concept of critical temperature and specific heat in physics, aimed at overcoming this limitation. Empirically, our method demonstrates superiority over existing sampling-based and data-driven algorithms across a diverse array of CO problems.
Cite
Text
Li and Zhang. "Reheated Gradient-Based Discrete Sampling for Combinatorial Optimization." Transactions on Machine Learning Research, 2025.Markdown
[Li and Zhang. "Reheated Gradient-Based Discrete Sampling for Combinatorial Optimization." Transactions on Machine Learning Research, 2025.](https://mlanthology.org/tmlr/2025/li2025tmlr-reheated/)BibTeX
@article{li2025tmlr-reheated,
title = {{Reheated Gradient-Based Discrete Sampling for Combinatorial Optimization}},
author = {Li, Muheng and Zhang, Ruqi},
journal = {Transactions on Machine Learning Research},
year = {2025},
url = {https://mlanthology.org/tmlr/2025/li2025tmlr-reheated/}
}