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arxiv: 2505.00698 · v2 · pith:WSERWYKEnew · submitted 2025-05-01 · 🪐 quant-ph

Comprehensive Study on Heisenberg-limited Quantum Algorithms for Multiple Observables Estimation

classification 🪐 quant-ph
keywords estimationalgorithmquantumalgorithmsheisenberg-limitedcomplexityerrorfermionic
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In the accompanying paper of arXiv:2505.00697, we have presented a generalized scheme of adaptive quantum gradient estimation (QGE) algorithm, and further proposed two practical variants which not only achieve doubly quantum enhancement in query complexity regarding estimation precision and number of observables, but also enable minimal cost to estimate $k$-RDMs in fermionic systems among existing quantum algorithms. Here, we provide full descriptions on the algorithm, and provide theoretical guarantee for the estimation precision in terms of the root mean squared error. Furthermore, we analyze the performance of the quantum amplitude estimation algorithm, another variant of the Heisenberg-limited scaling algorithm, and show how the estimation error is minimized under the circuit structure that resembles the phase estimation algorithm. We finally describe the details for the numerical evaluation of the query complexity of the Heisenberg-limited algorithms and sampling-based methods to make a thorough comparison in the task of estimating fermionic $k$-RDMs.

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Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. Near-Heisenberg-limited parallel amplitude estimation with logarithmic depth circuit

    quant-ph 2025-08 unverdicted novelty 6.0

    A tunable parallel amplitude estimation algorithm achieves near-Heisenberg query scaling and logarithmic depth via GHZ states and quantum signal processing, with a near-optimality proof using the parallel quantum adve...