Fast Zeroth-Order Convex Optimization with Quantum Gradient Methods
–Neural Information Processing Systems
We study quantum algorithms based on quantum (sub)gradient estimation using noisy function evaluation oracles, and demonstrate the first dimension-independent query complexities (up to poly-logarithmic factors) for zeroth-order convex optimization in both smooth and nonsmooth settings. Interestingly, only using noisy function evaluation oracles, we match the first-order query complexities of classical gradient descent, thereby exhibiting exponential separation between quantum and classical zeroth-order optimization. We then generalize these algorithms to work in non-Euclidean settings by using quantum (sub)gradient estimation to instantiate mirror descent and its variants, including dual averaging and mirror prox. By leveraging a connection between semidefinite programming and eigenvalue optimization, we use our quantum mirror descent method to give a new quantum algorithm for solving semidefinite programs, linear programs, and zero-sum games. We identify a parameter regime in which our zero-sum games algorithm is faster than any existing classical or quantum approach.
Neural Information Processing Systems
Jun-18-2026, 18:57:15 GMT
- Country:
- Europe (0.46)
- North America > United States (0.28)
- Genre:
- Research Report > Experimental Study (1.00)
- Industry:
- Banking & Finance (0.67)
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