Mirror descent of Hopfield model

11/29/2022
by   Hyungjoon Soh, et al.
0

Mirror descent is a gradient descent method that uses a dual space of parametric models. The great idea has been developed in convex optimization, but not yet widely applied in machine learning. In this study, we provide a possible way that the mirror descent can help data-driven parameter initialization of neural networks. We adopt the Hopfield model as a prototype of neural networks, we demonstrate that the mirror descent can train the model more effectively than the usual gradient descent with random parameter initialization.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset