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Metropolis-style random sampling of quantum gates for the estimation of low-energy observables

J. Unmuth-Yockey·November 29, 2021·DOI: 10.1103/PhysRevD.105.034515
Physics

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Abstract

We propose a quantum algorithm to compute low-energy expectation values of a quantum Hamiltonian by sampling a partition function associated with the average energy of that Hamiltonian. For any given quantum circuit-Hamiltonian pair, there is an associated average energy. The sampling is done through an accept/reject Metropolis-style algorithm on the quantum gates of the circuit itself. Observables calculated under the canonical ensemble from these samples of circuits are extrapolated from higher-energies to the ground state.

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