Publication Date:
2021
Short description:
On the Thermodynamic Interpretation of Deep Learning Systems / Fioresi, R.; Faglioni, F.; Morri, F.; Squadrani, L.. - 12829:(2021), pp. 909-917. ( 5th International Conference on Geometric Science of Information, GSI 2021 fra 2021) [10.1007/978-3-030-80209-7_97].
abstract:
In the study of time evolution of the parameters in Deep Learning systems, subject to optimization via SGD (stochastic gradient descent), temperature, entropy and other thermodynamic notions are commonly employed to exploit the Boltzmann formalism. We show that, in simulations on popular databases (CIFAR10, MNIST), such simplified models appear inadequate: different regions in the parameter space exhibit significantly different temperatures and no elementary function expresses the temperature in terms of learning rate and batch size, as commonly assumed. This suggests a more conceptual approach involving contact dynamics and Lie Group Thermodynamics.
Iris type:
Relazione in Atti di Convegno
Keywords:
Deep Learning; Lie groups machine learning; Statistical mechanics
List of contributors:
Fioresi, R.; Faglioni, F.; Morri, F.; Squadrani, L.
Book title:
GEOMETRIC SCIENCE OF INFORMATION (GSI 2021)
Published in: