Temporal Test-Time Adaptation with State-Space Models

Open Access
Authors
Publication date 10-2025
Journal Transactions on Machine Learning Research
Article number 5244
Volume | Issue number 2025
Number of pages 35
Organisations
  • Faculty of Science (FNWI) - Informatics Institute (IVI)
Abstract
Distribution shifts between training and test data are inevitable over the lifecycle of a deployed model, leading to performance decay. Adapting a model on test samples can help mitigate this drop in performance. However, most test-time adaptation methods have focused on synthetic corruption shifts, leaving a variety of distribution shifts underexplored. In this paper, we focus on distribution shifts that evolve gradually over time, which are common in the wild but challenging for existing methods, as we show. To address this, we propose STAD, a Bayesian filtering method that adapts a deployed model to temporal distribution shifts by learning the time-varying dynamics in the last set of hidden features. Without requiring labels, our model infers time-evolving class prototypes that act as a dynamic classification head. Through experiments on real-world temporal distribution shifts, we show that our method excels in handling small batch sizes and label shift.
Document type Article
Language English
Published at https://openreview.net/forum?id=HFETOmUtrV
Other links https://jmlr.org/tmlr/papers/index.html https://www.scopus.com/pages/publications/105020479369
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