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Main Authors: Mirlach, Jonas, Laguna, Sonia, Vogt, Julia E.
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.11210
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author Mirlach, Jonas
Laguna, Sonia
Vogt, Julia E.
author_facet Mirlach, Jonas
Laguna, Sonia
Vogt, Julia E.
contents Machine unlearning aims to remove the influence of specific data from trained models while preserving general utility. Existing approximate unlearning methods often rely on performance-degradation heuristics, such as loss maximization or random labeling. However, these signals can be poorly conditioned, leading to unstable optimization and harming the model's generalization. We argue that unlearning should instead prioritize distributional indistinguishability, aligning the model's behavior on forget data with its behavior on truly unseen data. Motivated by this, we propose Reference-Guided Unlearning (ReGUn), a framework that leverages a disjoint held-out dataset to provide a principled, class-conditioned reference for distillation. We demonstrate across various model architectures, natural image datasets, and varying forget fractions that ReGUn consistently outperforms standard approximate baselines, achieving a superior forgetting-utility trade-off.
format Preprint
id arxiv_https___arxiv_org_abs_2603_11210
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Reference-Guided Machine Unlearning
Mirlach, Jonas
Laguna, Sonia
Vogt, Julia E.
Machine Learning
Machine unlearning aims to remove the influence of specific data from trained models while preserving general utility. Existing approximate unlearning methods often rely on performance-degradation heuristics, such as loss maximization or random labeling. However, these signals can be poorly conditioned, leading to unstable optimization and harming the model's generalization. We argue that unlearning should instead prioritize distributional indistinguishability, aligning the model's behavior on forget data with its behavior on truly unseen data. Motivated by this, we propose Reference-Guided Unlearning (ReGUn), a framework that leverages a disjoint held-out dataset to provide a principled, class-conditioned reference for distillation. We demonstrate across various model architectures, natural image datasets, and varying forget fractions that ReGUn consistently outperforms standard approximate baselines, achieving a superior forgetting-utility trade-off.
title Reference-Guided Machine Unlearning
topic Machine Learning
url https://arxiv.org/abs/2603.11210