Efficient Hamiltonian, structure and trace distance learning of Gaussian states
Marco Fanizza, Cambyse Rouz\'e, Daniel Stilck Fran\c{c}a

TL;DR
This paper develops efficient quantum protocols for learning the Hamiltonian and structure of Gaussian states at positive temperature, with logarithmic sample complexity and applicability to continuous variable systems.
Contribution
It introduces novel, resource-efficient methods for Hamiltonian and graph learning of Gaussian states, advancing quantum system identification techniques.
Findings
Sample complexity scales logarithmically with the number of modes.
First results on trace distance learning with quadratic scaling in precision.
Efficient protocols require only heterodyne measurements.
Abstract
In this work, we initiate the study of Hamiltonian learning for positive temperature bosonic Gaussian states, the quantum generalization of the widely studied problem of learning Gaussian graphical models. We obtain efficient protocols, both in sample and computational complexity, for the task of inferring the parameters of their underlying quadratic Hamiltonian under the assumption of bounded temperature, squeezing, displacement and maximal degree of the interaction graph. Our protocol only requires heterodyne measurements, which are often experimentally feasible, and has a sample complexity that scales logarithmically with the number of modes. Furthermore, we show that it is possible to learn the underlying interaction graph in a similar setting and sample complexity. Taken together, our results put the status of the quantum Hamiltonian learning problem for continuous variable systems…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Quantum Information and Cryptography · Spectroscopy and Quantum Chemical Studies
