Provable and scalable quantum Gaussian processes for quantum learning
arXiv stat.ML / 5/4/2026
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Key Points
- The paper proposes “quantum Gaussian processes,” a Bayesian learning framework that learns from quantum systems by placing priors over unknown quantum transformations.
- It shows that, given sufficient knowledge of a quantum process’s structure and symmetries, unitary quantum stochastic processes can induce Gaussian processes via a quantum kernel, yielding a physics-informed inductive bias.
- The authors prove that matchgate (free-fermionic) evolutions produce provable and scalable quantum Gaussian processes, including a setting where the unknown unitary acts non-trivially across all qubits.
- The framework is demonstrated on tasks such as long-range extrapolation, phase-diagram learning in many-body physics, and sample-efficient Bayesian optimization for quantum sensing.
- Overall, the work argues that quantum Gaussian processes can provide simpler, interpretable, scalable, and quantum-data-native learning models compared with existing approaches.
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