2021
DOI: 10.48550/arxiv.2106.10653
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Practical Assessment of Generalization Performance Robustness for Deep Networks via Contrastive Examples

Abstract: Training images with data transformations have been suggested as contrastive examples to complement the testing set for generalization performance evaluation of deep neural networks (DNNs) [23]. In this work, we propose a practical framework ContRE 1 that uses Contrastive examples for DNN geneRalization performance Estimation. Specifically, ContRE follows the assumption in [5, 16] that robust DNN models with good generalization performance are capable of extracting a consistent set of features and making consi… Show more

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