Quantum Hopfield neural network
Author(s)
Rebentrost, Patrick; Bromley, Thomas R.; Weedbrook, Christian; Lloyd, Seth
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Quantum computing allows for the potential of significant advancements in both the speed and the capacity of widely used machine learning techniques. Here we employ quantum algorithms for the Hopfield network, which can be used for pattern recognition, reconstruction, and optimization as a realization of a content-addressable memory system. We show that an exponentially large network can be stored in a polynomial number of quantum bits by encoding the network into the amplitudes of quantum states. By introducing a classical technique for operating the Hopfield network, we can leverage quantum algorithms to obtain a quantum computational complexity that is logarithmic in the dimension of the data. We also present an application of our method as a genetic sequence recognizer.
Date issued
2018-10Department
Massachusetts Institute of Technology. Department of Mechanical Engineering; Massachusetts Institute of Technology. Department of Physics; Massachusetts Institute of Technology. Institute for Data, Systems, and Society; Massachusetts Institute of Technology. Research Laboratory of ElectronicsJournal
Physical review A
Publisher
American Physical Society
Citation
Rebentrost, Patrick, Thomas R. Bromley, Christian Weedbrook and Seth Lloyd. "Quantum Hopfield neural network." Phys. Rev. A 98, 042308 (2018)
Version: Final published version
ISSN
2469-9926
2469-9934