Online Label Shift: Optimal Dynamic Regret meets Practical Algorithms

05/31/2023
by   Dheeraj Baby, et al.
0

This paper focuses on supervised and unsupervised online label shift, where the class marginals Q(y) varies but the class-conditionals Q(x|y) remain invariant. In the unsupervised setting, our goal is to adapt a learner, trained on some offline labeled data, to changing label distributions given unlabeled online data. In the supervised setting, we must both learn a classifier and adapt to the dynamically evolving class marginals given only labeled online data. We develop novel algorithms that reduce the adaptation problem to online regression and guarantee optimal dynamic regret without any prior knowledge of the extent of drift in the label distribution. Our solution is based on bootstrapping the estimates of online regression oracles that track the drifting proportions. Experiments across numerous simulated and real-world online label shift scenarios demonstrate the superior performance of our proposed approaches, often achieving 1-3% improvement in accuracy while being sample and computationally efficient. Code is publicly available at https://github.com/acmi-lab/OnlineLabelShift.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/09/2021

Online Adaptation to Label Distribution Shift

Machine learning models often encounter distribution shifts when deploye...
research
07/05/2022

Adapting to Online Label Shift with Provable Guarantees

The standard supervised learning paradigm works effectively when trainin...
research
07/26/2022

Domain Adaptation under Open Set Label Shift

We introduce the problem of domain adaptation under Open Set Label Shift...
research
06/11/2021

Online Continual Adaptation with Active Self-Training

Models trained with offline data often suffer from continual distributio...
research
03/23/2020

Minimax optimal approaches to the label shift problem

We study minimax rates of convergence in the label shift problem. In add...
research
01/22/2022

PiCO: Contrastive Label Disambiguation for Partial Label Learning

Partial label learning (PLL) is an important problem that allows each tr...
research
02/17/2023

Learning from Label Proportion with Online Pseudo-Label Decision by Regret Minimization

This paper proposes a novel and efficient method for Learning from Label...

Please sign up or login with your details

Forgot password? Click here to reset