Can physical concepts and laws emerge in a neural network as it learns to predict the observation data of physical systems? As a benchmark and a proof-of-principle study of this possibility, here we show an introspective learning architecture that can automatically develop the concept of the quantum wave function and discover the Schrodinger equation from simulated experimental data of the potential-to-density mappings of a quantum particle. This introspective learning architecture contains a machine translator to perform the potential to density mapping, and a knowledge distiller auto-encoder to extract the essential information and its update law from the hidden states of the translator, which turns out to be the quantum wave function and the Schrodinger equation. We envision that our introspective learning architecture can enable machine learning to discover new physics in the future.
[1]
I. Antoniadis,et al.
Journal of High Energy Physics Little string theory at a TeV
,
2022
.
[2]
G. G. Stokes.
"J."
,
1890,
The New Yale Book of Quotations.
[3]
Miss A.O. Penney.
(b)
,
1974,
The New Yale Book of Quotations.
[4]
Luigi Acerbi,et al.
Advances in Neural Information Processing Systems 27
,
2014
.
[5]
Ieee Xplore,et al.
IEEE Transactions on Pattern Analysis and Machine Intelligence Information for Authors
,
2022,
IEEE Transactions on Pattern Analysis and Machine Intelligence.