Machine learning assisted quantum state estimation
- URL: http://arxiv.org/abs/2003.03441v1
- Date: Fri, 6 Mar 2020 21:12:27 GMT
- Title: Machine learning assisted quantum state estimation
- Authors: Sanjaya Lohani, Brian T. Kirby, Michael Brodsky, Onur Danaci, and Ryan
T. Glasser
- Abstract summary: We build a general quantum state tomography framework that makes use of machine learning techniques to reconstruct quantum states.
For a wide range of pure and mixed input states we demonstrate via simulations that our method produces functionally equivalent reconstructed states.
We anticipate that the present results combining the fields of machine intelligence and quantum state estimation will greatly improve and speed up tomography-based quantum experiments.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We build a general quantum state tomography framework that makes use of
machine learning techniques to reconstruct quantum states from a given set of
coincidence measurements. For a wide range of pure and mixed input states we
demonstrate via simulations that our method produces functionally equivalent
reconstructed states to that of traditional methods with the added benefit that
expensive computations are front-loaded with our system. Further, by training
our system with measurement results that include simulated noise sources we are
able to demonstrate a significantly enhanced average fidelity when compared to
typical reconstruction methods. These enhancements in average fidelity are also
shown to persist when we consider state reconstruction from partial tomography
data where several measurements are missing. We anticipate that the present
results combining the fields of machine intelligence and quantum state
estimation will greatly improve and speed up tomography-based quantum
experiments.
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