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When Gradient Descent Meets Derivative-Free Optimization: A Match Made in Black-Box Scenario (2305.10013v1)

Published 17 May 2023 in cs.CL and cs.AI

Abstract: Large pre-trained LLMs (PLMs) have garnered significant attention for their versatility and potential for solving a wide spectrum of NLP tasks. However, the cost of running these PLMs may be prohibitive. Furthermore, PLMs may not be open-sourced due to commercial considerations and potential risks of misuse, such as GPT-3. The parameters and gradients of PLMs are unavailable in this scenario. To solve the issue, black-box tuning has been proposed, which utilizes derivative-free optimization (DFO), instead of gradient descent, for training task-specific continuous prompts. However, these gradient-free methods still exhibit a significant gap compared to gradient-based methods. In this paper, we introduce gradient descent into black-box tuning scenario through knowledge distillation. Furthermore, we propose a novel method GDFO, which integrates gradient descent and derivative-free optimization to optimize task-specific continuous prompts in a harmonized manner. Experimental results show that GDFO can achieve significant performance gains over previous state-of-the-art methods.

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Authors (8)
  1. Chengcheng Han (83 papers)
  2. Liqing Cui (4 papers)
  3. Renyu Zhu (17 papers)
  4. Jianing Wang (50 papers)
  5. Nuo Chen (100 papers)
  6. Qiushi Sun (26 papers)
  7. Xiang Li (1003 papers)
  8. Ming Gao (95 papers)
Citations (6)

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