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Online Adaptation to Label Distribution Shift

About

Machine learning models often encounter distribution shifts when deployed in the real world. In this paper, we focus on adaptation to label distribution shift in the online setting, where the test-time label distribution is continually changing and the model must dynamically adapt to it without observing the true label. Leveraging a novel analysis, we show that the lack of true label does not hinder estimation of the expected test loss, which enables the reduction of online label shift adaptation to conventional online learning. Informed by this observation, we propose adaptation algorithms inspired by classical online learning techniques such as Follow The Leader (FTL) and Online Gradient Descent (OGD) and derive their regret bounds. We empirically verify our findings under both simulated and real world label distribution shifts and show that OGD is particularly effective and robust to a variety of challenging label shift scenarios.

Ruihan Wu, Chuan Guo, Yi Su, Kilian Q. Weinberger• 2021

Related benchmarks

TaskDatasetResultRank
Image ClassificationMNIST (test)--
882
Unsupervised Online Label ShiftMNIST
Classification Error (Bernoulli)3.2
18
Unsupervised Online Label ShiftSynthetic Monotone shift
Classification Error6.3
9
Unsupervised Online Label ShiftMNIST Monotone shift
Classification Error4
9
Unsupervised Online Label ShiftMNIST Square shift
Classification Error Rate0.039
9
Unsupervised Online Label ShiftCIFAR Monotone shift
Classification Error0.12
9
Unsupervised Online Label ShiftEuroSAT Monotone shift
Classification Error9.9
9
Unsupervised Online Label ShiftFashion Monotone shift
Classification Error8.4
9
Unsupervised Online Label ShiftArXiv Monotone shift
Classification Error0.18
9
Unsupervised Online Label ShiftCIFAR
Classification Error (Bernoulli)11
9
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