Multilevel Artificial Neural Network Training for Spatially Correlated Learning

06/14/2018
by   C. B. Scott, et al.
0

Multigrid modeling algorithms are a technique used to accelerate relaxation models running on a hierarchy of similar graphlike structures. We introduce and demonstrate a new method for training neural networks which uses multilevel methods. Using an objective function derived from a graph-distance metric, we perform orthogonally-constrained optimization to find optimal prolongation and restriction maps between graphs. We compare and contrast several methods for performing this numerical optimization, and additionally present some new theoretical results on upper bounds of this type of objective function. Once calculated, these optimal maps between graphs form the core of Multiscale Artificial Neural Network (MsANN) training, a new procedure we present which simultaneously trains a hierarchy of neural network models of varying spatial resolution. Parameter information is passed between members of this hierarchy according to standard coarsening and refinement schedules from the multiscale modelling literature. In our machine learning experiments, these models are able to learn faster than default training, achieving a comparable level of error in an order of magnitude fewer training examples.

READ FULL TEXT
research
02/19/2012

Classification by Ensembles of Neural Networks

We introduce a new procedure for training of artificial neural networks ...
research
09/10/2019

Novel diffusion-derived distance measures for graphs

We define a new family of similarity and distance measures on graphs, an...
research
08/07/2017

Parallelizing Over Artificial Neural Network Training Runs with Multigrid

Artificial neural networks are a popular and effective machine learning ...
research
04/21/2019

Solution of Definite Integrals using Functional Link Artificial Neural Networks

This paper discusses a new method to solve definite integrals using arti...
research
04/13/2020

Multilevel Minimization for Deep Residual Networks

We present a new multilevel minimization framework for the training of d...
research
10/03/2022

Optimal consumption-investment choices under wealth-driven risk aversion

CRRA utility where the risk aversion coefficient is a constant is common...

Please sign up or login with your details

Forgot password? Click here to reset