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Transferable Calibration with Lower Bias and Variance in Domain Adaptation

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Domain Adaptation (DA) enables transferring a learning machine from a labeled source domain to an unlabeled target one. While remarkable advances have been made, most of the existing DA methods focus on improving the target accuracy at inference. How to estimate the predictive uncertainty of DA models is vital for decision-making in safety-critical scenarios but remains the boundary to explore. In this paper, we delve into the open problem of Calibration in DA, which is extremely challenging due to the coexistence of domain shift and the lack of target labels. We first reveal the dilemma that DA models learn higher accuracy at the expense of well-calibrated probabilities. Driven by this finding, we propose Transferable Calibration (TransCal) to achieve more accurate calibration with lower bias and variance in a unified hyperparameter-free optimization framework. As a general post-hoc calibration method, TransCal can be easily applied to recalibrate existing DA methods. Its efficacy has been justified both theoretically and empirically.

Ximei Wang, Mingsheng Long, Jianmin Wang, Michael I. Jordan• 2020

Related benchmarks

TaskDatasetResultRank
CalibrationUSPS
ECE8.36
57
Top-label Confidence CalibrationMNIST
ECE4.68
42
Image Classification CalibrationPACS Photo
ECE7.27
39
Image Classification CalibrationPACS Sketch
ECE9.09
30
Class-wise CalibrationMNIST
CwECE2.47
30
Image Classification CalibrationPACS Art
ECE16.1
30
Image Classification CalibrationPACS Cartoon
ECE11.3
30
Top-label Confidence CalibrationSVHN
ECE59.4
30
Uncertainty EstimationCIFAR10-C Benign Stream
ECE56.7
16
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