2022
DOI: 10.48550/arxiv.2203.13522
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New Quantum Algorithms for Computing Quantum Entropies and Distances

Abstract: We propose a series of quantum algorithms for computing a wide range of quantum entropies and distances, including the von Neumann entropy, quantum Rényi entropy, trace distance, and fidelity. The proposed algorithms significantly outperform the best known (and even quantum) ones in the low-rank case, some of which achieve exponential speedups. In particular, for Ndimensional quantum states of rank r, our proposed quantum algorithms for computing the von Neumann entropy, trace distance and fidelity within addi… Show more

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Cited by 1 publication
(5 citation statements)
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“…For example, f (x) = x is just a simple one-term polynomial, whereas f (x) = √ x takes much more terms to precisely approximate. Thus such a method presented in [48] may lead to even worse complexity than previous ones in [11][12][13]. We defer further discussion and comparison to Appendix E 4.…”
Section: Methods For Sα(ρ) Estimationmentioning
confidence: 97%
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“…For example, f (x) = x is just a simple one-term polynomial, whereas f (x) = √ x takes much more terms to precisely approximate. Thus such a method presented in [48] may lead to even worse complexity than previous ones in [11][12][13]. We defer further discussion and comparison to Appendix E 4.…”
Section: Methods For Sα(ρ) Estimationmentioning
confidence: 97%
“…The polynomial transformation implemented by QSVT lies in amplitudes of the outcome state, which could not be obtained by indirect measurements of the ancilla qubit in QSVT, thus most QSVT-based entropies estimation algorithms estimate the value either by applying amplitude estimation or combining with the DQC1 model, and both of these methods increase the circuit size. Another approach is using a polynomial to estimate the square root of the function f (x), as shown by Wang et al [48]. This approach makes QSVT compatible with indirect measurements, since the approximated function now can be represented by the probability of measuring, which is similar as in QPP.…”
Section: Methods For Sα(ρ) Estimationmentioning
confidence: 99%
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