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Guardrail Baselines for Unlearning in LLMs

Guardrail-based methods such as prompting and filtering can achieve unlearning results comparable to finetuning at a lower computational cost, indicating a need for better evaluation metrics to distinguish between these approaches.

Year
2024
Venue
arXiv 2024
Authors
5
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arxiv.org/abs/2403.03329v3ARXIV-DEFAULT
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Abstract

Recent work has demonstrated that finetuning is a promising approach to 'unlearn' concepts from large language models. However, finetuning can be expensive, as it requires both generating a set of examples and running iterations of finetuning to update the model. In this work, we show that simple guardrail-based approaches such as prompting and filtering can achieve unlearning results comparable to finetuning. We recommend that researchers investigate these lightweight baselines when evaluating the performance of more computationally intensive finetuning methods. While we do not claim that methods such as prompting or filtering are universal solutions to the problem of unlearning, our work suggests the need for evaluation metrics that can better separate the power of guardrails vs. finetuning, and highlights scenarios where guardrails expose possible unintended behavior in existing metrics and benchmarks.

Authors

5