LoRA Training in the NTK Regime has No Spurious Local Minima
Abstract
Theoretical analysis of LoRA fine-tuning in the NTK regime shows that LoRA with rank greater than sqrt(N) helps eliminate spurious local minima and improves generalization.
Low-rank adaptation (LoRA) has become the standard approach for parameter-efficient fine-tuning of large language models (LLM), but our theoretical understanding of LoRA has been limited. In this work, we theoretically analyze LoRA fine-tuning in the neural tangent kernel (NTK) regime with N data points, showing: (i) full fine-tuning (without LoRA) admits a low-rank solution of rank rlesssim N; (ii) using LoRA with rank rgtrsim N eliminates spurious local minima, allowing gradient descent to find the low-rank solutions; (iii) the low-rank solution found using LoRA generalizes well.
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