Gated Adaptation for Continual Learning in Human Activity Recognition
arXiv cs.AI / 3/12/2026
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Key Points
- The paper proposes a parameter-efficient continual learning approach for on-device HAR that uses channel-wise gated modulation of frozen pretrained representations to adapt to new subjects while preserving previous knowledge.
- Adaptation is restricted to diagonal scaling of existing features (feature selection rather than feature generation), which preserves the geometry of pretrained representations.
- The authors provide theoretical analysis showing gating acts as a bounded diagonal operator that limits representational drift compared with unrestricted linear transformations.
- Empirical results on the PAMAP2 dataset with 8 sequential subjects show forgetting reduced from 39.7% to 16.2% and final accuracy improved from 56.7% to 77.7%, while training under 2% of parameters and without replay buffers or task-specific regularization.
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