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Trapped Ion Quantum Computing
Quantum Machine Learning
Quantum Simulation
Natural gradient and parameter estimation for quantum Boltzmann machines
arXiv
Authors: Dhrumil Patel, Mark M. Wilde
Year
2024
Paper ID
37382
Status
Preprint
Abstract Read
~2 min
Abstract Words
207
Citations
N/A
Abstract
Thermal states play a fundamental role in various areas of physics, and they are becoming increasingly important in quantum information science, with applications related to semi-definite programming, quantum Boltzmann machine learning, Hamiltonian learning, and the related task of estimating the parameters of a Hamiltonian. Here we establish formulas underlying the basic geometry of parameterized thermal states, and we delineate quantum algorithms for estimating the values of these formulas. More specifically, we establish formulas for the Fisher--Bures and Kubo--Mori information matrices of parameterized thermal states, and our quantum algorithms for estimating their matrix elements involve a combination of classical sampling, Hamiltonian simulation, and the Hadamard test. These results have applications in developing a natural gradient descent algorithm for quantum Boltzmann machine learning, which takes into account the geometry of thermal states, and in establishing fundamental limitations on the ability to estimate the parameters of a Hamiltonian, when given access to thermal-state samples. For the latter task, and for the special case of estimating a single parameter, we sketch an algorithm that realizes a measurement that is asymptotically optimal for the estimation task. We finally stress that the natural gradient descent algorithm developed here can be used for any machine learning problem that employs the quantum Boltzmann machine ansatz.
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- This paper contributes to the Quantum Machine Learning research area in the Quantum Articles archive.
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- Thermal states play a fundamental role in various areas of physics, and they are becoming increasingly important in quantum information science, with applications related to...
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