JACTUS unifies low-rank compression and task adaptation via a task-aware union of subspaces and global rank allocation by marginal gain, outperforming 100% PEFT methods like DoRA on ViT-Base (89.2% avg) and Llama2-7B (80.9% avg) at 80% retained parameters.
CMS Books in Mathematics, Springer, New York, 2 edn
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Compress Then Adapt? No, Do It Together via Task-aware Union of Subspaces
JACTUS unifies low-rank compression and task adaptation via a task-aware union of subspaces and global rank allocation by marginal gain, outperforming 100% PEFT methods like DoRA on ViT-Base (89.2% avg) and Llama2-7B (80.9% avg) at 80% retained parameters.