Noise-Robustness Through Noise: A Framework combining Asymmetric LoRA with Poisoning MoE
Wang, Zhaokun, Guo, Jinyu, Pu, Jingwen, Chen, Lingfeng, Pu, Hongli, Ou, Jie, Qin, Libo, Tian, Wenhong
–arXiv.org Artificial Intelligence
Current parameter-efficient fine-tuning methods for adapting pre-trained language models to downstream tasks are susceptible to interference from noisy data. Conventional noise-handling approaches either rely on laborious data pre-processing or employ model architecture modifications prone to error accumulation. In contrast to existing noise-process paradigms, we propose a noise-robust adaptation method via asymmetric LoRA poisoning experts (LoPE), a novel framework that enhances model robustness to noise only with generated noisy data. Drawing inspiration from the mixture-of-experts architecture, LoPE strategically integrates a dedicated poisoning expert in an asymmetric LoRA configuration. Through a two-stage paradigm, LoPE performs noise injection on the poisoning expert during fine-tuning to enhance its noise discrimination and processing ability. During inference, we selectively mask the dedicated poisoning expert to leverage purified knowledge acquired by normal experts for noise-robust output. Extensive experiments demonstrate that LoPE achieves strong performance and robustness purely through the low-cost noise injection, which completely eliminates the requirement of data cleaning.
arXiv.org Artificial Intelligence
Oct-22-2025
- Country:
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- Europe > Austria
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- Minnesota > Hennepin County > Minneapolis (0.14)
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- New Finding (1.00)
- Research Report
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