While large language models have proven effective in a huge range of downstream applications, they often generate text that is problematic or lacks a desired attribute. In this paper, we introduce Reward-Augmented Decoding (RAD), a text generation procedure that uses a small unidirectional reward model to encourage a language model to generate text that has certain properties. Specifically, RAD uses the reward model to score generations as they are produced and rescales sampling probabilities to favor high-reward tokens. By using a unidirectional reward model, RAD can cache activations from prior generation steps to decrease computational overhead. Through experiments on generating non-toxic and sentiment-controlled text, we demonstrate that RAD performs best among methods that change only the generation procedure and matches the performance of state-of-the-art methods that involve re-training the language model. We further validate that RAD is effective on very large language models while incurring a minimal computational overhead.
Reward-Augmented Decoding: Efficient Controlled Text Generation With a Unidirectional Reward Model
Reward-Augmented Decoding (RAD) enhances text generation by using a unidirectional reward model to favor desirable text attributes, achieving performance comparable to re-training methods with minimal computational cost.
- Year
- 2023
- Venue
- arXiv 2023
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- 2
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2310.09520v4ARXIV-DEFAULT
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