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Variational quantum algorithms with invariant probabilistic error cancellation on noisy quantum processors

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中国科学数据2025-11-17 更新2026-04-25 收录
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https://www.sciengine.com/AA/doi/10.1007/s11433-025-2779-x
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In the noisy intermediate-scale quantum era, emerging classical-quantum hybrid optimization algorithms, such as variational quantum algorithms (VQAs), can leverage the unique characteristics of quantum devices to accelerate computations tailored to specific problems with shallow circuits.However, these algorithms encounter biases and iteration difficulties due to significant noise in quantum processors.These difficulties can only be partially addressed without error correction by optimizing hardware, reducing circuit complexity, or fitting and extrapolating.A compelling solution is applying probabilistic error cancellation (PEC), a quantum error mitigation technique that enables unbiased results without full error correction.Traditional PEC is challenging to apply in VQAs due to its variance amplification, contradicting iterative process assumptions.This paper proposes a novel noise-adaptable strategy that combines PEC with the quantum approximate optimization algorithm (QAOA).It is implemented through invariant sampling circuits (invariant-PEC, or IPEC) and substantially reduces iteration variance.This strategy marks the first successful integration of PEC and QAOA, resulting in efficient convergence.Moreover, we introduce adaptive partial PEC (APPEC), which modulates the error cancellation proportion of IPEC during iteration.We experimentally validate this technique on a superconducting quantum processor, cutting sampling cost by 90.1%.Notably, we find that dynamic adjustments of error levels via APPEC can enhance the ability to escape from local minima and reduce sampling costs.These results open promising avenues for executing VQAs with large-scale, low-noise quantum circuits, paving the way for practical quantum computing advancements.
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2025-08-15
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