While alignment algorithms are now commonly used to tune pre-trained language models towards a user's preferences, we lack explanations for the underlying mechanisms in which models become ``aligned'', thus making it difficult to explain phenomena like jailbreaks. In this work we study a popular algorithm, direct preference optimization (DPO), and the mechanisms by which it reduces toxicity. Namely, we first study how toxicity is represented and elicited in a pre-trained language model, GPT2-medium. We then apply DPO with a carefully crafted pairwise dataset to reduce toxicity. We examine how the resulting model averts toxic outputs, and find that capabilities learned from pre-training are not removed, but rather bypassed. We use this insight to demonstrate a simple method to un-align the model, reverting it back to its toxic behavior.
A Mechanistic Understanding of Alignment Algorithms: A Case Study on DPO and Toxicity
This study investigates the mechanisms of reducing toxicity in pre-trained language models using direct preference optimization, revealing that capabilities are bypassed rather than removed, and demonstrates a method to revert the model to toxic behavior.
- Year
- 2024
- Venue
- arXiv 2024
- Authors
- 6
- Hosting
- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2401.01967ARXIV-DEFAULT
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