JSAI2022

JSAI2022

Jun 14 - Jul 8, 2022Kyoto International Conference Center+online
The Japanese Society for Artificial Intelligence
JSAI2022

JSAI2022

Jun 14 - Jul 8, 2022Kyoto International Conference Center+online

[1D1-GS-2-02]Scheduling of Damping in Natural Gradient Method

〇Hiroki Naganuma1,2, Gaku Fujimori3, Mari Takeuchi4, Jumpei Nagase5(1. University of Montreal, 2. Mila, 3. Tokyo University of Science, 4. University College London, 5. Shibaura Institute of Technology)
[[Online]]

Keywords:

Deep Learning,Second-Order Optimization,Damping

In recent years, second-order optimization with a fast convergence rate has been used in deep learning owing to fast approximation methods for natural gradient methods. Second-order optimization requires the inverse computation of the information matrix, which generally degenerates in the deep learning problem. Therefore, as a heuristic, a damping method adds a unit matrix multiplied by a constant. This study proposed a method for scheduling damping motivated by the Levenberg-Marquardt method for determining damping and investigated its effectiveness.