CLeAN: Continual Learning Adaptive Normalization in Dynamic Environments
arXiv cs.LG / 3/19/2026
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Key Points
- The paper introduces Continual Learning Adaptive Normalization (CLeAN), a normalization technique designed for continual learning in tabular data to cope with changing data distributions.
- CLeAN uses learnable global feature scales updated via an Exponential Moving Average to adapt normalization without access to the entire dataset.
- The approach is evaluated on two datasets across several continual learning strategies, including Reservoir Experience Replay, A-GEM, and EwC, showing improved performance on new data and reduced catastrophic forgetting.
- Findings highlight adaptive normalization as a key factor for stability and knowledge retention in evolving learning environments.
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