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Quantum Langevin Dynamics for Optimization

27 November 2023
Zherui Chen
Yuchen Lu
Hao Wang
Yizhou Liu
Tongyang Li
    AI4CE
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Abstract

We initiate the study of utilizing Quantum Langevin Dynamics (QLD) to solve optimization problems, particularly those non-convex objective functions that present substantial obstacles for traditional gradient descent algorithms. Specifically, we examine the dynamics of a system coupled with an infinite heat bath. This interaction induces both random quantum noise and a deterministic damping effect to the system, which nudge the system towards a steady state that hovers near the global minimum of objective functions. We theoretically prove the convergence of QLD in convex landscapes, demonstrating that the average energy of the system can approach zero in the low temperature limit with an exponential decay rate correlated with the evolution time. Numerically, we first show the energy dissipation capability of QLD by retracing its origins to spontaneous emission. Furthermore, we conduct detailed discussion of the impact of each parameter. Finally, based on the observations when comparing QLD with classical Fokker-Plank-Smoluchowski equation, we propose a time-dependent QLD by making temperature and ℏ\hbarℏ time-dependent parameters, which can be theoretically proven to converge better than the time-independent case and also outperforms a series of state-of-the-art quantum and classical optimization algorithms in many non-convex landscapes.

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@article{chen2025_2311.15587,
  title={ Quantum Langevin Dynamics for Optimization },
  author={ Zherui Chen and Yuchen Lu and Hao Wang and Yizhou Liu and Tongyang Li },
  journal={arXiv preprint arXiv:2311.15587},
  year={ 2025 }
}
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