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Multilevel-in-Layer Training for Deep Neural Network Regression

Authors :
Ponce, Colin
Li, Ruipeng
Mao, Christina
Vassilevski, Panayot
Ponce, Colin
Li, Ruipeng
Mao, Christina
Vassilevski, Panayot
Publication Year :
2022

Abstract

A common challenge in regression is that for many problems, the degrees of freedom required for a high-quality solution also allows for overfitting. Regularization is a class of strategies that seek to restrict the range of possible solutions so as to discourage overfitting while still enabling good solutions, and different regularization strategies impose different types of restrictions. In this paper, we present a multilevel regularization strategy that constructs and trains a hierarchy of neural networks, each of which has layers that are wider versions of the previous network's layers. We draw intuition and techniques from the field of Algebraic Multigrid (AMG), traditionally used for solving linear and nonlinear systems of equations, and specifically adapt the Full Approximation Scheme (FAS) for nonlinear systems of equations to the problem of deep learning. Training through V-cycles then encourage the neural networks to build a hierarchical understanding of the problem. We refer to this approach as \emph{multilevel-in-width} to distinguish from prior multilevel works which hierarchically alter the depth of neural networks. The resulting approach is a highly flexible framework that can be applied to a variety of layer types, which we demonstrate with both fully-connected and convolutional layers. We experimentally show with PDE regression problems that our multilevel training approach is an effective regularizer, improving the generalize performance of the neural networks studied.<br />Comment: 24 pages, 9 figures, submitted to Numerical Linear Algebra with Applications

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1381581850
Document Type :
Electronic Resource