PAC Confidence Sets for Deep Neural Networks via Calibrated Prediction
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Departmental Papers (CIS)
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CPS Safe Autonomy
PAC
confidence sets
classification
regression
reinforcement learning
Computer Engineering
Computer Sciences
PAC
confidence sets
classification
regression
reinforcement learning
Computer Engineering
Computer Sciences
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Abstract
We propose an algorithm combining calibrated prediction and generalization bounds from learning theory to construct confidence sets for deep neural networks with PAC guarantees---i.e., the confidence set for a given input contains the true label with high probability. We demonstrate how our approach can be used to construct PAC confidence sets on ResNet for ImageNet, a visual object tracking model, and a dynamics model for the half-cheetah reinforcement learning problem.
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2020-02-01
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Departmental Papers (CIS)
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2023-05-17T23:26:25.000
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International Conference on Learning Representations (ICLR 2020), Addis Ababa, Ethiopia, April 26-30, 2020
Recommended citation
@inproceedings{ Park2020PAC, title={PAC Confidence Sets for Deep Neural Networks via Calibrated Prediction}, author={Sangdon Park and Osbert Bastani and Nikolai Matni and Insup Lee}, booktitle={International Conference on Learning Representations}, year={2020}, url={https://openreview.net/forum?id=BJxVI04YvB} }