GenFT: A Generative Parameter-Efficient Fine-Tuning Method for Pretrained Foundation Models
Abstract
Parameter-efficient fine-tuning (PEFT) has emerged as a resource-efficient strategy for adapting Pretrained Foundation Models (PFMs) by learning a small number of task-specific updates ΔW. Existing methods often learn ΔW largely independently of pretrained weights W0, or exploit W0 mainly through initialization or simple reparameterization. To further leverage the structural information encoded in W0, we propose Generative Parameter-Efficient Fine-Tuning (GenFT), a W0-conditioned PEFT method that uses a deterministic weight generator to produce task-specific updates. Specifically, GenFT performs row and column transformations with nonlinear activations to extract structured patterns from W0, and introduces a shared-specific decomposition to balance cross-layer information reuse and layer-specific flexibility. GenFT is simple and parameter-efficient, achieving competitive or better average performance across NLP and CV benchmarks. We further provide a pilot study on LLaMA-7B to examine its feasibility for generative models. The code is available at GitHub https://github.com/xuguangning1218/GenFT.
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