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Deep learning and the Schrödinger equation
Published 5 Feb 2017 in cond-mat.mtrl-sci, cs.LG, and physics.chem-ph | (1702.01361v3)
Abstract: We have trained a deep (convolutional) neural network to predict the ground-state energy of an electron in four classes of confining two-dimensional electrostatic potentials. On randomly generated potentials, for which there is no analytic form for either the potential or the ground-state energy, the neural network model was able to predict the ground-state energy to within chemical accuracy, with a median absolute error of 1.49 mHa. We also investigate the performance of the model in predicting other quantities such as the kinetic energy and the first excited-state energy of random potentials.
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