Noether Networks: Meta-Learning Useful Conserved Quantities (w/ the authors)
#deeplearning #noether #symmetries
This video includes an interview with first author Ferran Alet!
Encoding inductive biases has been a long established methods to provide deep networks with the ability to learn from less data. Especially useful are encodings of symmetry properties of the data, such as the convolution’s translation invariance. But such symmetries are often hard to program explicitly, and can only be encoded exactly when done in a direct fashion. Noether Networks use Noether’s theorem connecting symmetries to conserved quantities and are able to dynamically and approximately enforce symmetry properties upon deep neural networks.
OUTLINE:
0:00 - Intro & Overview
18:10 - Interview Start
21:20 - Symmetry priors vs conserved quantities
23:25 - Example: Pendulum
27:45 - Noether Network Model Overview
35:35 - Optimizing the Noether Loss
41:00 - Is the computation graph stable?
46:30 - Increasing the inference time computation
48:45 - Why dynamically modify the model?
55:30 - Experimental Results &
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3 years ago 01:09:05 1
Noether Networks: Meta-Learning Useful Conserved Quantities (w/ the authors)