On margin-based generalization prediction in deep neural networks
Coenraad Mouton

TL;DR
This paper investigates the effectiveness of margin-based complexity measures in predicting deep neural network generalization, identifies their limitations, and proposes a new margin measure incorporating data manifold approximation that improves prediction accuracy.
Contribution
The study introduces a novel margin-based measure that accounts for data manifold structure, enhancing generalization prediction over existing margin metrics.
Findings
Margin metrics are limited and often poorly correlated with empirical risk.
Different types of sample noise affect margin measurements differently.
The new margin measure outperforms existing metrics and benchmarks.
Abstract
Understanding generalization in deep neural networks is an active area of research. A promising avenue of exploration has been that of margin measurements: the shortest distance to the decision boundary for a given sample or that sample's representation internal to the network. Margin-based complexity measures have been shown to be correlated with the generalization ability of deep neural networks in some circumstances but not others. The reasons behind the success or failure of these metrics are currently unclear. In this study, we examine margin-based generalization prediction methods in different settings. We motivate why these metrics sometimes fail to accurately predict generalization and how they can be improved. First, we analyze the relationship between margins measured in the input space and sample noise. We find that different types of sample noise can have a very different…
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Taxonomy
TopicsNeural Networks and Applications
