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On-manifold Adversarial Data Augmentation Improves Uncertainty Calibration
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Citations
23
References
2021
Year
Unknown Venue
Artificial IntelligenceData AugmentationMachine VisionMachine LearningData ScienceEngineeringUncertainty QuantificationGenerative Adversarial NetworkAutoencodersAdversarial Machine LearningGenerative ModelUncertainty EstimatesComputer ScienceDeep LearningReliable QuantificationTemperature Scaling
Uncertainty estimates help to identify ambiguous, novel, or anomalous inputs, but the reliable quantification of uncertainty has proven to be challenging for modern deep networks. To improve uncertainty estimation, we propose On-Manifold Adversarial Data Augmentation or OMADA, which specifically attempts to generate challenging examples by following an on-manifold adversarial attack path in the latent space of an autoencoder that closely approximates the decision boundaries between classes. On a variety of datasets and for multiple network architectures, OMADA consistently yields more accurate and better calibrated classifiers than baseline models, and outperforms competing approaches such as Mixup, as well as achieving similar performance to (at times better than) postprocessing calibration methods such as temperature scaling. Variants of OMADA can employ different sampling schemes for ambiguous on-manifold examples based on the entropy of their estimated soft labels, which exhibit specific strengths for generalization, calibration of predicted uncertainty, or detection of out-of-distribution inputs.
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