Distance-Based Learning from Errors for Confidence Calibration

December 03, 2019 ยท Declared Dead ยท ๐Ÿ› International Conference on Learning Representations

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Authors Chen Xing, Sercan Arik, Zizhao Zhang, Tomas Pfister arXiv ID 1912.01730 Category cs.LG: Machine Learning Cross-listed stat.ML Citations 42 Venue International Conference on Learning Representations Last Checked 4 months ago
Abstract
Deep neural networks (DNNs) are poorly calibrated when trained in conventional ways. To improve confidence calibration of DNNs, we propose a novel training method, distance-based learning from errors (DBLE). DBLE bases its confidence estimation on distances in the representation space. In DBLE, we first adapt prototypical learning to train classification models. It yields a representation space where the distance between a test sample and its ground truth class center can calibrate the model's classification performance. At inference, however, these distances are not available due to the lack of ground truth labels. To circumvent this by inferring the distance for every test sample, we propose to train a confidence model jointly with the classification model. We integrate this into training by merely learning from mis-classified training samples, which we show to be highly beneficial for effective learning. On multiple datasets and DNN architectures, we demonstrate that DBLE outperforms alternative single-model confidence calibration approaches. DBLE also achieves comparable performance with computationally-expensive ensemble approaches with lower computational cost and lower number of parameters.
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