Robust and efficient estimation of global quantum properties under realistic noise
- URL: http://arxiv.org/abs/2507.13237v1
- Date: Thu, 17 Jul 2025 15:47:46 GMT
- Title: Robust and efficient estimation of global quantum properties under realistic noise
- Authors: Qingyue Zhang, Dayue Qin, Zhou You, Feng Xu, Jens Eisert, You Zhou,
- Abstract summary: We propose a robust phase shadow scheme based on random circuits with controlled-Z as unique entangling gate type.<n>We show that phase shadows match the performance of full Clifford-based ones.<n>Our results enhance the practicality of shadow-based techniques, providing a robust and scalable route for estimating global properties in noisy quantum systems.
- Score: 5.598445225432505
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Measuring global quantum properties -- such as the fidelity to complex multipartite states -- is both an essential and experimentally challenging task. Classical shadow estimation offers favorable sample complexity, but typically relies on many-qubit circuits that are difficult to realize on current platforms. We propose the robust phase shadow scheme, a measurement framework based on random circuits with controlled-Z as the unique entangling gate type, tailored to architectures such as trapped ions and neutral atoms. Leveraging tensor diagrammatic reasoning, we rigorously analyze the induced circuit ensemble and show that phase shadows match the performance of full Clifford-based ones. Importantly, our approach supports a noise-robust extension via purely classical post-processing, enabling reliable estimation under realistic, gate-dependent noise where existing techniques often fail. Additionally, by exploiting structural properties of random stabilizer states, we design an efficient post-processing algorithm that resolves a key computational bottleneck in previous shadow protocols. Our results enhance the practicality of shadow-based techniques, providing a robust and scalable route for estimating global properties in noisy quantum systems.
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