Optimizing quantum noise-induced reservoir computing for nonlinear and
chaotic time series prediction
- URL: http://arxiv.org/abs/2303.05488v2
- Date: Thu, 9 Nov 2023 12:19:34 GMT
- Title: Optimizing quantum noise-induced reservoir computing for nonlinear and
chaotic time series prediction
- Authors: Daniel Fry, Amol Deshmukh, Samuel Yen-Chi Chen, Vladimir Rastunkov,
Vanio Markov
- Abstract summary: We make advancements to the quantum noise-induced reservoir, in which reservoir noise is used as a resource to generate expressive, nonlinear signals.
We show that with only a single noise model and small memory capacities, excellent simulation results were obtained on nonlinear benchmarks.
- Score: 2.5427629797261297
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Quantum reservoir computing is strongly emerging for sequential and time
series data prediction in quantum machine learning. We make advancements to the
quantum noise-induced reservoir, in which reservoir noise is used as a resource
to generate expressive, nonlinear signals that are efficiently learned with a
single linear output layer. We address the need for quantum reservoir tuning
with a novel and generally applicable approach to quantum circuit
parameterization, in which tunable noise models are programmed to the quantum
reservoir circuit to be fully controlled for effective optimization. Our
systematic approach also involves reductions in quantum reservoir circuits in
the number of qubits and entanglement scheme complexity. We show that with only
a single noise model and small memory capacities, excellent simulation results
were obtained on nonlinear benchmarks that include the Mackey-Glass system for
100 steps ahead in the challenging chaotic regime.
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