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Variational Quantum Generators: Generative Adversarial Quantum Machine Learning for Continuous Distributions
Author(s) -
Romero Jonathan,
AspuruGuzik Alán
Publication year - 2021
Publication title -
advanced quantum technologies
Language(s) - English
Resource type - Journals
ISSN - 2511-9044
DOI - 10.1002/qute.202000003
Subject(s) - quantum machine learning , quantum circuit , computer science , quantum , quantum algorithm , quantum network , topology (electrical circuits) , quantum computer , theoretical computer science , artificial intelligence , mathematics , physics , quantum mechanics , combinatorics
A hybrid quantum–classical approach to model continuous classical probability distributions using a variational quantum circuit is proposed. The architecture of this quantum generator consists of a quantum circuit that encodes a classical random variable into a quantum state and a parameterized quantum circuit trained to mimic the target distribution. The model allows for easy interfacing with a classical function, such as a neural network, and is trained using an adversarial learning approach. It is shown that the quantum generator is able to learn using either a classical neural network or a variational quantum circuit as the discriminator model. This implementation takes advantage of automatic differentiation tools to perform the optimization of the variational circuits employed. The framework presented here for the design and implementation of the variational quantum generators can serve as a blueprint for designing hybrid quantum–classical models for other machine learning tasks.