Squeezing as a resource for time series processing in quantum reservoir
computing
- URL: http://arxiv.org/abs/2310.07406v2
- Date: Mon, 16 Oct 2023 20:44:49 GMT
- Title: Squeezing as a resource for time series processing in quantum reservoir
computing
- Authors: Jorge Garc\'ia-Beni, Gian Luca Giorgi, Miguel C. Soriano and Roberta
Zambrini
- Abstract summary: We address the effects of squeezing in neuromorphic machine learning for time series processing.
In particular, we consider a loop-based photonic architecture for reservoir computing.
We demonstrate that multimode squeezing enhances its accessible memory, which improves the performance in several benchmark temporal tasks.
- Score: 3.072340427031969
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Squeezing is known to be a quantum resource in many applications in
metrology, cryptography, and computing, being related to entanglement in
multimode settings. In this work, we address the effects of squeezing in
neuromorphic machine learning for time series processing. In particular, we
consider a loop-based photonic architecture for reservoir computing and address
the effect of squeezing in the reservoir, considering a Hamiltonian with both
active and passive coupling terms. Interestingly, squeezing can be either
detrimental or beneficial for quantum reservoir computing when moving from
ideal to realistic models, accounting for experimental noise. We demonstrate
that multimode squeezing enhances its accessible memory, which improves the
performance in several benchmark temporal tasks. The origin of this improvement
is traced back to the robustness of the reservoir to readout noise as squeezing
increases.
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