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Training Language Models to Win Debates with Self-Play Improves Judge Accuracy

Debate training enhances the quality of language model arguments over consultancy methods in complex tasks, suggesting its potential for effective supervision in difficult-to-evaluate scenarios.

Year
2024
Venue
arXiv 2024
Authors
3
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arxiv.org/abs/2409.16636ARXIV-DEFAULT
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Abstract

We test the robustness of debate as a method of scalable oversight by training models to debate with data generated via self-play. In a long-context reading comprehension task, we find that language model based evaluators answer questions more accurately when judging models optimized to win debates. By contrast, we find no such relationship for consultancy models trained to persuade a judge without an opposing debater present. In quantitative and qualitative comparisons between our debate models and novel consultancy baselines, we find evidence that debate training encourages stronger and more informative arguments, showing promise that it can help provide high-quality supervision for tasks that are difficult to directly evaluate.

Authors

3