Saved in:
Bibliographic Details
Main Authors: Kim, Junbeom, Kim, Kyuyoung, Tack, Jihoon, Lim, Dongha, Shin, Jinwoo
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2509.25973
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866914067620298752
author Kim, Junbeom
Kim, Kyuyoung
Tack, Jihoon
Lim, Dongha
Shin, Jinwoo
author_facet Kim, Junbeom
Kim, Kyuyoung
Tack, Jihoon
Lim, Dongha
Shin, Jinwoo
contents Language models trained on web-scale corpora risk memorizing and exposing sensitive information, prompting the need for effective machine unlearning. Prior methods mainly focus on input queries to suppress sensitive outputs, yet this often fails to eliminate the underlying knowledge and limits scalability. To address this, we propose Corrective Unlearning with Retrieved Exclusions (CURE), a novel unlearning framework that verifies model outputs for leakage and revises them into safe responses. Specifically, CURE employs a lightweight corrector that is applied to the original model to verify whether outputs contain target knowledge and to rewrite them if any leakage is detected. To efficiently handle large-scale unlearning requests, CURE retrieves unlearning targets that are relevant to the initial response and provides them as in-context references to the corrector for detection and conditional revision. By leveraging this retrieval augmentation, the corrector can adapt to new unlearning requests without additional training. Extensive evaluations demonstrate that CURE substantially reduces information leakage, even from indirect queries where prior works fall short, while maintaining response quality and general utility. Moreover, it demonstrates robustness under continual unlearning scenarios, making it practical for real-world applications.
format Preprint
id arxiv_https___arxiv_org_abs_2509_25973
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Scalable and Robust LLM Unlearning by Correcting Responses with Retrieved Exclusions
Kim, Junbeom
Kim, Kyuyoung
Tack, Jihoon
Lim, Dongha
Shin, Jinwoo
Artificial Intelligence
I.2.6
Language models trained on web-scale corpora risk memorizing and exposing sensitive information, prompting the need for effective machine unlearning. Prior methods mainly focus on input queries to suppress sensitive outputs, yet this often fails to eliminate the underlying knowledge and limits scalability. To address this, we propose Corrective Unlearning with Retrieved Exclusions (CURE), a novel unlearning framework that verifies model outputs for leakage and revises them into safe responses. Specifically, CURE employs a lightweight corrector that is applied to the original model to verify whether outputs contain target knowledge and to rewrite them if any leakage is detected. To efficiently handle large-scale unlearning requests, CURE retrieves unlearning targets that are relevant to the initial response and provides them as in-context references to the corrector for detection and conditional revision. By leveraging this retrieval augmentation, the corrector can adapt to new unlearning requests without additional training. Extensive evaluations demonstrate that CURE substantially reduces information leakage, even from indirect queries where prior works fall short, while maintaining response quality and general utility. Moreover, it demonstrates robustness under continual unlearning scenarios, making it practical for real-world applications.
title Scalable and Robust LLM Unlearning by Correcting Responses with Retrieved Exclusions
topic Artificial Intelligence
I.2.6
url https://arxiv.org/abs/2509.25973