Towards Robust and Efficient Federated Low-Rank Adaptation with Heterogeneous Clients

ACL ARR 2024 December Submission1852 Authors

16 Dec 2024 (modified: 05 Feb 2025)ACL ARR 2024 December SubmissionEveryoneRevisionsBibTeXCC BY 4.0
Abstract:

Federated fine-tuning for Large Language Models (LLMs) has recently gained attention due to the heavy communication overhead of transmitting large model updates. Low Rank Adaptation (LoRA) has been proposed as a solution, yet its application in federated learning is complicated by discordance in aggregation. Existing methods addressing this discordance often suffer from performance degradation at low ranks in heterogeneous data settings. In response, we introduce LoRA-A$^2$ (Low Rank Adaptation with Alternating freeze and Adaptive rank selection), which demonstrates robustness in challenging settings with low ranks and high data heterogeneity. Our experimental findings reveal that LoRA-A$^2$ maintains performance even under extreme heterogeneity and low rank conditions, achieving up to a 99.8% reduction in uploaded parameters compared to full fine-tuning without compromising performance. This adaptive mechanism boosts robustness and communication efficiency in federated fine-tuning, enabling the practical deployment of LLMs in resource-constrained environments.

Paper Type: Long
Research Area: Efficient/Low-Resource Methods for NLP
Research Area Keywords: parameter-efficient-training, NLP in resource-constrained settings, federated learning
Contribution Types: Approaches to low-resource settings
Languages Studied: English
Submission Number: 1852
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