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A Path Towards Quantum Advantage in Training Deep Generative Models with Quantum AnnealingA class of quantum-classical hybrid machine-learning algorithms can be obtained by integrating classical deep generative models with quantum probability distributions as 'priors' over their latent variables. We introduce a hybrid implementation of variational autoencoders (QVAE) and also present a technique to hybridize flow-based invertible generative models. We demonstrate the use of D-Wave quantum annealers as physical simulators of quantum Boltzmann machines (QBM) to perform quantum-assisted training of QVAE. Latent-space QBM develop slowly mixing modes, opening a path to obtain quantum advantage in generative modeling with available quantum devices.
Document ID
20200001432
Acquisition Source
Ames Research Center
Document Type
Presentation
Authors
Vinci, Walter
(Stinger Ghaffarian Technologies Inc. (SGT Inc.) Moffett Field, CA, United States)
Lorenzo Buffoni
(Università degli Studi di Firenze (UniFL) Florence, Italy)
Hossein Sadeghi
(D-Wave Systems Inc. Burnaby, British Columbia, Canada)
Amir Khoshaman
(D-Wave Systems Inc. Burnaby, British Columbia, Canada)
Evgeny Andriyash
(D-Wave Systems Inc. Burnaby, British Columbia, Canada)
Mohammad Amin
(D-Wave Systems Inc. Burnaby, British Columbia, Canada)
Date Acquired
March 9, 2020
Publication Date
March 2, 2020
Subject Category
Physics (General)
Report/Patent Number
ARC-E-DAA-TN77752
Meeting Information
Meeting: American Physical Society (APS) March Meeting
Location: Denver, CO
Country: United States
Start Date: March 2, 2020
End Date: March 6, 2020
Sponsors: American Physical Society (APS) HQ
Funding Number(s)
CONTRACT_GRANT: NNA14AA60C
Distribution Limits
Public
Copyright
Use by or on behalf of the US Gov. Permitted.
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