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SEPS: A Separability Measure for Robust Unlearning in LLMs

SEPS: A Separability Measure for Robust Unlearning in LLMs

来源:Arxiv_logoArxiv
英文摘要

Machine unlearning aims to selectively remove targeted knowledge from Large Language Models (LLMs), ensuring they forget specified content while retaining essential information. Existing unlearning metrics assess whether a model correctly answers retain queries and rejects forget queries, but they fail to capture real-world scenarios where forget queries rarely appear in isolation. In fact, forget and retain queries often coexist within the same prompt, making mixed-query evaluation crucial. We introduce SEPS, an evaluation framework that explicitly measures a model's ability to both forget and retain information within a single prompt. Through extensive experiments across three benchmarks, we identify two key failure modes in existing unlearning methods: (1) untargeted unlearning indiscriminately erases both forget and retain content once a forget query appears, and (2) targeted unlearning overfits to single-query scenarios, leading to catastrophic failures when handling multiple queries. To address these issues, we propose Mixed Prompt (MP) unlearning, a strategy that integrates both forget and retain queries into a unified training objective. Our approach significantly improves unlearning effectiveness, demonstrating robustness even in complex settings with up to eight mixed forget and retain queries in a single prompt.

Wonje Jeung、Sangyeon Yoon、Albert No

计算技术、计算机技术

Wonje Jeung,Sangyeon Yoon,Albert No.SEPS: A Separability Measure for Robust Unlearning in LLMs[EB/OL].(2025-05-20)[2025-06-05].https://arxiv.org/abs/2505.14832.点此复制

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