Learning Potentials of Quantum Systems using Deep Neural Networks
- URL: http://arxiv.org/abs/2006.13297v3
- Date: Fri, 15 Jan 2021 00:45:27 GMT
- Title: Learning Potentials of Quantum Systems using Deep Neural Networks
- Authors: Arijit Sehanobish, Hector H. Corzo, Onur Kara, David van Dijk
- Abstract summary: NNs can learn classical Hamiltonian mechanics.
Can NNs be endowed with inductive biases through observation as means to provide insights into quantum phenomena?
- Score: 6.270305440413689
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Attempts to apply Neural Networks (NN) to a wide range of research problems
have been ubiquitous and plentiful in recent literature. Particularly, the use
of deep NNs for understanding complex physical and chemical phenomena has
opened a new niche of science where the analysis tools from Machine Learning
(ML) are combined with the computational concepts of the natural sciences.
Reports from this unification of ML have presented evidence that NNs can learn
classical Hamiltonian mechanics. This application of NNs to classical physics
and its results motivate the following question: Can NNs be endowed with
inductive biases through observation as means to provide insights into quantum
phenomena? In this work, this question is addressed by investigating possible
approximations for reconstructing the Hamiltonian of a quantum system in an
unsupervised manner by using only limited information obtained from the
system's probability distribution.
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