A comparative study of different machine learning methods for dissipative quantum dynamics
ORAL
Abstract
It has been recently shown that supervised machine learning (ML) algorithms can accurately and efficiently predict long-time population dynamics of dissipative quantum systems given only short-time population dynamics. In this work, we benchmarked 22 ML models on their ability to predict long-time dynamics of a two-level quantum system linearly coupled to harmonic bath. The models include uni- and bidirectional recurrent, convolutional, and fully-connected feedforward artificial neural networks (ANNs) and kernel ridge regression (KRR) with linear and most commonly used nonlinear kernels. Our results suggest that KRR with nonlinear kernels can serve as inexpensive yet accurate way to simulate long-time dynamics in cases where the constant length of input trajectories is appropriate. Convolutional gated recurrent unit model is found to be the most efficient ANN model.
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Presenters
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Luis Eduardo E Herrera Rodriguez
University of Delaware
Authors
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Luis Eduardo E Herrera Rodriguez
University of Delaware
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Arif Ullah
Xiamen University
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Kennet J Rueda Espinosa
University of Delaware
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Pavlo Dral
Xiamen University
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Alexei A Kananenka
University of Delaware