Beyond Invariance: Test-Time Label-Shift Adaptation for Distributions with "Spurious" Correlations
Qingyao Sun (Cornell University), Kevin Murphy (Google DeepMind),, Sayna Ebrahimi (Google Cloud AI Research), Alexander D'Amour (Google, DeepMind)

TL;DR
This paper introduces TTLSA, a test-time adaptation method that corrects label-shift in distributions with nuisance factors using EM, improving model robustness without fitting generative models.
Contribution
It proposes a novel test-time label-shift correction method that adapts to changes in joint distributions using EM, avoiding the need for generative modeling.
Findings
Improves performance over invariance-based methods.
Effective on image, text, and medical datasets.
Enhances robustness to distribution shifts.
Abstract
Changes in the data distribution at test time can have deleterious effects on the performance of predictive models . We consider situations where there are additional meta-data labels (such as group labels), denoted by , that can account for such changes in the distribution. In particular, we assume that the prior distribution , which models the dependence between the class label and the "nuisance" factors , may change across domains, either due to a change in the correlation between these terms, or a change in one of their marginals. However, we assume that the generative model for features is invariant across domains. We note that this corresponds to an expanded version of the widely used "label shift" assumption, where the labels now also include the nuisance factors . Based on this observation, we propose a test-time label shift correction…
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Taxonomy
TopicsCancer-related molecular mechanisms research
MethodsTest
