Tensor network based machine learning of non-Markovian quantum processes
- URL: http://arxiv.org/abs/2004.11038v1
- Date: Thu, 23 Apr 2020 09:24:34 GMT
- Title: Tensor network based machine learning of non-Markovian quantum processes
- Authors: Chu Guo, Kavan Modi, and Dario Poletti
- Abstract summary: We show how to learn structures of generic, non-Markovian, quantum processes using a tensor network based machine learning algorithm.
We show how the bond dimension of the MPO, a measure of non-Markovianity, depends on the properties of the system, of the environment and of their interaction.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We show how to learn structures of generic, non-Markovian, quantum stochastic
processes using a tensor network based machine learning algorithm. We do this
by representing the process as a matrix product operator (MPO) and train it
with a database of local input states at different times and the corresponding
time-nonlocal output state. In particular, we analyze a qubit coupled to an
environment and predict output state of the system at different time, as well
as reconstruct the full system process. We show how the bond dimension of the
MPO, a measure of non-Markovianity, depends on the properties of the system, of
the environment and of their interaction. Hence, this study opens the way to a
possible experimental investigation into the process tensor and its properties.
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