2024
DOI: 10.1038/s42005-024-01763-x
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On the sample complexity of quantum Boltzmann machine learning

Luuk Coopmans,
Marcello Benedetti

Abstract: Quantum Boltzmann machines (QBMs) are machine-learning models for both classical and quantum data. We give an operational definition of QBM learning in terms of the difference in expectation values between the model and target, taking into account the polynomial size of the data set. By using the relative entropy as a loss function, this problem can be solved without encountering barren plateaus. We prove that a solution can be obtained with stochastic gradient descent using at most a polynomial number of Gibb… Show more

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