Machine Learning Regression of Quantum Many-Body Operator Dynamics
ORAL
Abstract
The accurate determination of the long-time dynamics of operator expectation values for quantum many body systems is a computationally demanding problem, with traditional methods scaling exponentially with the system size. We develop a machine learning method which determines the long time dynamics by performing a regression over expectation values calculated exactly over short time intervals. WIth this approach, the long-time dynamics can be determined independent of system size. We demonstrate this computational advantage for both the Ising model in transverse field and the XXZ model.
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Presenters
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Justin Reyes
University of Central Florida
Authors
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Justin Reyes
University of Central Florida
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Sayandip Dhara
University of Central Florida
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Eduardo R Mucciolo
University of Central Florida, Department of Physics, University of Central Florida, Orlando, FL 32816, USA