1. Applications of fractional calculus in learned optimization
- Author
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Szente, Teodor Alexandru, Harrison, James, Zanfir, Mihai, and Sminchisescu, Cristian
- Subjects
Computer Science - Machine Learning - Abstract
Fractional gradient descent has been studied extensively, with a focus on its ability to extend traditional gradient descent methods by incorporating fractional-order derivatives. This approach allows for more flexibility in navigating complex optimization landscapes and offers advantages in certain types of problems, particularly those involving non-linearities and chaotic dynamics. Yet, the challenge of fine-tuning the fractional order parameters remains unsolved. In this work, we demonstrate that it is possible to train a neural network to predict the order of the gradient effectively., Comment: NeurIPS Workshop on Optimization for Machine Learning
- Published
- 2024