Title
Multi-agent reinforcement learning using simulated quantum annealing
Author
Neumann, N.M.P.
de Heer, P.B.U.L.
Chiscop, I.
Phillipson, F.
Publication year
2020
Abstract
With quantum computers still under heavy development, already numerous quantum machine learning algorithms have been proposed for both gate-based quantum computers and quantum annealers. Recently, a quantum annealing version of a reinforcement learning algorithm for grid-traversal using one agent was published. We extend this work based on quantum Boltzmann machines, by allowing for any number of agents. We show that the use of quantum annealing can improve the learning compared to classical methods. We do this both by means of actual quantum hardware and by simulated quantum annealing.
Subject
Multi-agent
Reinforced learning
Quantum computing
D-Wave
Quantum annealing
To reference this document use:
http://resolver.tudelft.nl/uuid:499be90f-d120-4373-802c-02db94df99e6
TNO identifier
875788
Source
International Conference on Computational Science (ICCS)
Bibliographical note
plaats en datum ontbreken: conferentie afgelast. proceedings worden later gepubliceerd
Document type
conference paper