LGAIFeb 5, 2025

LoCA: Location-Aware Cosine Adaptation for Parameter-Efficient Fine-Tuning

arXiv:2502.06820v24 citationsh-index: 13ICLR
Originality Incremental advance
AI Analysis

This work addresses parameter-efficient fine-tuning for large language and vision models, offering an incremental improvement over existing methods like LoRA.

The authors tackled the limitation of low-rank adaptation (LoRA) in fine-tuning pre-trained models by introducing LoCA, a frequency-domain method using inverse Discrete Cosine Transform with selective learnable components, which achieved enhanced parameter efficiency on diverse language and vision tasks.

Low-rank adaptation (LoRA) has become a prevalent method for adapting pre-trained large language models to downstream tasks. However, the simple low-rank decomposition form may constrain the hypothesis space. To address this limitation, we introduce Location-aware Cosine Adaptation (LoCA), a novel frequency-domain parameter-efficient fine-tuning method based on inverse Discrete Cosine Transform (iDCT) with selective locations of learnable components. We begin with a comprehensive theoretical comparison between frequency-domain and low-rank decompositions for fine-tuning pre-trained large models. Our analysis reveals that frequency-domain decomposition with carefully selected frequency components can surpass the expressivity of traditional low-rank-based methods. Furthermore, we demonstrate that iDCT offers a more efficient implementation compared to inverse Discrete Fourier Transform (iDFT), allowing for better selection and tuning of frequency components while maintaining equivalent expressivity to the optimal iDFT-based adaptation. By employing finite-difference approximation to estimate gradients for discrete locations of learnable coefficients on the DCT spectrum, LoCA dynamically selects the most informative frequency components during training. Experiments on diverse language and vision fine-tuning tasks demonstrate that LoCA offers enhanced parameter efficiency while maintains computational feasibility comparable to low-rank-based methods.

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