We investigate the supervised machine learning of few interacting bosons in optical speckle disorder
via artificial neural networks. The learning curve shows an approximately universal
power-law scaling for different particle numbers and for different
interaction strengths. We introduce a network architecture that can be trained and tested on heterogeneous datasets
including different particle numbers.
This network provides accurate predictions for all system sizes included in the training set
and, by design, is suitable to attempt extrapolations to (computationally challenging) larger sizes.
Notably, a novel transfer-learning strategy is implemented, whereby the learning of the larger systems is substantially accelerated and made consistently accurate by including in the training set many small-size instances.
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