CLAIAug 19, 2024

TeamLoRA: Boosting Low-Rank Adaptation with Expert Collaboration and Competition

arXiv:2408.09856v110 citationsh-index: 22Has Code
Originality Incremental advance
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This addresses the problem of balancing effectiveness and efficiency in PEFT for multi-task learning, offering an incremental improvement over existing methods.

The paper tackles the performance limitations of Parameter-Efficient Fine-Tuning (PEFT) methods like LoRA in multi-task scenarios by introducing TeamLoRA, which uses expert collaboration and competition to enhance efficiency and accuracy, achieving faster training and inference speeds and improved performance on multi-task benchmarks.

While Parameter-Efficient Fine-Tuning (PEFT) methods like LoRA have effectively addressed GPU memory constraints during fine-tuning, their performance often falls short, especially in multidimensional task scenarios. To address this issue, one straightforward solution is to introduce task-specific LoRA modules as domain experts, leveraging the modeling of multiple experts' capabilities and thus enhancing the general capability of multi-task learning. Despite promising, these additional components often add complexity to the training and inference process, contravening the efficient characterization of PEFT designed for. Considering this, we introduce an innovative PEFT method, TeamLoRA, consisting of a collaboration and competition module for experts, and thus achieving the right balance of effectiveness and efficiency: (i) For collaboration, a novel knowledge-sharing and -organizing mechanism is devised to appropriately reduce the scale of matrix operations, thereby boosting the training and inference speed. (ii) For competition, we propose leveraging a game-theoretic interaction mechanism for experts, encouraging experts to transfer their domain-specific knowledge while facing diverse downstream tasks, and thus enhancing the performance. By doing so, TeamLoRA elegantly connects the experts as a "Team" with internal collaboration and competition, enabling a faster and more accurate PEFT paradigm for multi-task learning. To validate the superiority of TeamLoRA, we curate a comprehensive multi-task evaluation(CME) benchmark to thoroughly assess the capability of multi-task learning. Experiments conducted on our CME and other benchmarks indicate the effectiveness and efficiency of TeamLoRA. Our project is available at https://github.com/Lin-Tianwei/TeamLoRA.

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