Learning hard quantum distributions with variational autoencoders
Andrea Rocchetto, Edward Grant, Sergii Strelchuk, Giuseppe Carleo,, Simone Severini

TL;DR
This paper explores using variational autoencoders to efficiently represent and learn hard quantum state distributions, potentially aiding quantum state characterization beyond classical computational limits.
Contribution
Introduces a novel neural network-based representation for quantum states using variational autoencoders, demonstrating their effectiveness on hard-to-sample quantum states.
Findings
Deep networks better represent hard-to-sample states
No benefit observed for random states
Potential for quantum state characterization in hardware
Abstract
Studying general quantum many-body systems is one of the major challenges in modern physics because it requires an amount of computational resources that scales exponentially with the size of the system.Simulating the evolution of a state, or even storing its description, rapidly becomes intractable for exact classical algorithms. Recently, machine learning techniques, in the form of restricted Boltzmann machines, have been proposed as a way to efficiently represent certain quantum states with applications in state tomography and ground state estimation. Here, we introduce a new representation of states based on variational autoencoders. Variational autoencoders are a type of generative model in the form of a neural network. We probe the power of this representation by encoding probability distributions associated with states from different classes. Our simulations show that deep…
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