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Gi and Pal Scores: Deep Neural Network Generalization Statistics

8 April 2021
Yair Schiff
Brian Quanz
Payel Das
Pin-Yu Chen
ArXiv (abs)PDFHTML
Abstract

The field of Deep Learning is rich with empirical evidence of human-like performance on a variety of regression, classification, and control tasks. However, despite these successes, the field lacks strong theoretical error bounds and consistent measures of network generalization and learned invariances. In this work, we introduce two new measures, the Gi-score and Pal-score, that capture a deep neural network's generalization capabilities. Inspired by the Gini coefficient and Palma ratio, measures of income inequality, our statistics are robust measures of a network's invariance to perturbations that accurately predict generalization gaps, i.e., the difference between accuracy on training and test sets.

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