AI RESEARCH
Finer Parameter Steps for Low-Rank PEFT: A Controlled Study with CP Tensor Adapters
arXiv CS.AI
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ArXi:2606.00428v1 Announce Type: cross Low-rank adapters are usually compared by sweeping a small set of ranks, but the rank also fixes the resolution of the parameter budget. For a $2048{\times}2048$ OPT attention projection, increasing LoRA by one rank s $4096$ trainable scalars, leaving large gaps between feasible low-budget adapter sizes. This paper asks whether a tensorized adapter with finer capacity increments changes the observed accuracy--budget trade-off. We instantiate this question with fixed-component canonical polyadic (CP) tensor adapters.