A3Rank: Augmentation Alignment Analysis for Prioritizing Overconfident Failing Samples for Deep Learning Models
- URL: http://arxiv.org/abs/2407.14114v1
- Date: Fri, 19 Jul 2024 08:32:10 GMT
- Title: A3Rank: Augmentation Alignment Analysis for Prioritizing Overconfident Failing Samples for Deep Learning Models
- Authors: Zhengyuan Wei, Haipeng Wang, Qilin Zhou, W. K. Chan,
- Abstract summary: We propose a novel test case prioritization technique with augmentation alignment analysis.
$A3$Rank can effectively rank failing samples escaping from the checking of confidence-based rejectors.
We also provide a framework to construct a detector devoted to augmenting these rejectors to defend these failing samples.
- Score: 2.6499018693213316
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Sharpening deep learning models by training them with examples close to the decision boundary is a well-known best practice. Nonetheless, these models are still error-prone in producing predictions. In practice, the inference of the deep learning models in many application systems is guarded by a rejector, such as a confidence-based rejector, to filter out samples with insufficient prediction confidence. Such confidence-based rejectors cannot effectively guard against failing samples with high confidence. Existing test case prioritization techniques effectively distinguish confusing samples from confident samples to identify failing samples among the confusing ones, yet prioritizing the failing ones high among many confident ones is challenging. In this paper, we propose $A^3$Rank, a novel test case prioritization technique with augmentation alignment analysis, to address this problem. $A^3$Rank generates augmented versions of each test case and assesses the extent of the prediction result for the test case misaligned with these of the augmented versions and vice versa. Our experiment shows that $A^3$Rank can effectively rank failing samples escaping from the checking of confidence-based rejectors, which significantly outperforms the peer techniques by 163.63\% in the detection ratio of top-ranked samples. We also provide a framework to construct a detector devoted to augmenting these rejectors to defend these failing samples, and our detector can achieve a significantly higher defense success rate.
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