Weak-to-Strong Search: Align Large Language Models via Searching over Small Language Models
Zhou, Zhanhui, Liu, Zhixuan, Liu, Jie, Dong, Zhichen, Yang, Chao, Qiao, Yu
–arXiv.org Artificial Intelligence
Large language models are usually fine-tuned to align with human preferences. However, fine-tuning a large language model can be challenging. In this work, we introduce weak-to-strong search, framing the alignment of a large language model as a test-time greedy search to maximize the log-likelihood difference between small tuned and untuned models while sampling from the frozen large model. This method serves both as (i) a compute-efficient model up-scaling strategy that avoids directly tuning the large model and as (ii) an instance of weak-to-strong generalization that enhances a strong model with weak test-time guidance. Empirically, we demonstrate the flexibility of weak-to-strong search across different tasks. In controlled-sentiment generation and summarization, we use tuned and untuned gpt2s to effectively improve the alignment of large models without additional training. Crucially, in a more difficult instruction-following benchmark, AlpacaEval 2.0, we show that reusing off-the-shelf small models (e.g., zephyr-7b-beta and its untuned version) can significantly improve the length-controlled win rates of both white-box and black-box large models against gpt-4-turbo (e.g., 34.4 37.9 for Llama-3-70B-Instruct and 16.0 20.1 for gpt-3.5-turbo-instruct),
arXiv.org Artificial Intelligence
May-29-2024
- Country:
- North America > United States > Oregon (0.14)
- Genre:
- Research Report (0.81)
- Industry:
- Leisure & Entertainment (1.00)
- Media > Film (1.00)
- Technology: