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arXiv:1804.06521 [cond-mat.dis-nn]AbstractReferencesReviewsResources

Method to solve quantum few-body problems with artificial neural networks

Hiroki Saito

Published 2018-04-18Version 1

A machine learning technique to obtain the ground states of quantum few-body systems using artificial neural networks is developed. Bosons in continuous space are considered and a neural network is optimized in such a way that when particle positions are input into the network, the ground-state wave function is output from the network. The method is applied to the Calogero-Sutherland model in one-dimensional space and Efimov bound states in three-dimensional space.

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