Echo-evolution data generation for quantum error mitigation via neural
networks
- URL: http://arxiv.org/abs/2311.00487v1
- Date: Wed, 1 Nov 2023 12:40:10 GMT
- Title: Echo-evolution data generation for quantum error mitigation via neural
networks
- Authors: D.V. Babukhin
- Abstract summary: We propose a physics-motivated method to generate training data for quantum error mitigation via neural networks.
Under this method, the initial state evolves forward and backward in time, returning to the initial state at the end of evolution.
We demonstrate that a feed-forward fully connected neural network trained on echo-evolution-generated data can correct results of forward-in-time evolution.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Neural networks provide a prospective tool for error mitigation in quantum
simulation of physical systems. However, we need both noisy and noise-free data
to train neural networks to mitigate errors in quantum computing results. Here,
we propose a physics-motivated method to generate training data for quantum
error mitigation via neural networks, which does not require classical
simulation and target circuit simplification. In particular, we propose to use
the echo evolution of a quantum system to collect noisy and noise-free data for
training a neural network. Under this method, the initial state evolves forward
and backward in time, returning to the initial state at the end of evolution.
When run on the noisy quantum processor, the resulting state will be influenced
by with quantum noise accumulated during evolution. Having a vector of
observable values of the initial (noise-free) state and the resulting (noisy)
state allows us to compose training data for a neural network. We demonstrate
that a feed-forward fully connected neural network trained on
echo-evolution-generated data can correct results of forward-in-time evolution.
Our findings can enhance the application of neural networks to error mitigation
in quantum computing.
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