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[2308.03958] Simple synthetic data reduces sycophancy in large language models



Download a PDF of the paper titled Simple synthetic data reduces sycophancy in large language models, by Jerry Wei and Da Huang and Yifeng Lu and Denny Zhou and Quoc V. Le

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Abstract:Sycophancy is an undesirable behavior where models tailor their responses to follow a human user’s view even when that view is not objectively correct (e.g., adapting liberal views once a user reveals that they are liberal). In this paper, we study the prevalence of sycophancy in language models and propose a simple synthetic-data intervention to reduce this behavior.

First, on a set of three sycophancy tasks (Perez et al., 2022) where models are asked for an opinion on statements with no correct answers (e.g., politics), we observe that both model scaling and instruction tuning significantly increase sycophancy for PaLM models up to 540B parameters. Second, we extend sycophancy evaluations to simple addition statements that are objectively incorrect, finding that despite knowing that these statements are wrong, language models will still agree with them if the user does as well.

To reduce sycophancy, we present a straightforward synthetic-data intervention that takes public NLP tasks and encourages models to be robust to user opinions on these tasks. Adding these data in a lightweight finetuning step can significantly reduce sycophantic behavior on held-out prompts. Code for generating synthetic data for intervention can be found at this https URL.

Submission history

From: Jerry Wei [view email]
[v1]
Mon, 7 Aug 2023 23:48:36 UTC (151 KB)
[v2]
Thu, 15 Feb 2024 01:03:13 UTC (151 KB)



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