Dies ist eine Übersichtsseite mit Metadaten zu dieser wissenschaftlichen Arbeit. Der vollständige Artikel ist beim Verlag verfügbar.
The Unlearning Mirage: A Dynamic Framework for Evaluating LLM Unlearning
0
Zitationen
5
Autoren
2026
Jahr
Abstract
Unlearning in Large Language Models (LLMs) aims to enhance safety, mitigate biases, and comply with legal mandates, such as the right to be forgotten. However, existing unlearning methods are brittle: minor query modifications, such as multi-hop reasoning and entity aliasing, can recover supposedly forgotten information. As a result, current evaluation metrics often create an illusion of effectiveness, failing to detect these vulnerabilities due to reliance on static, unstructured benchmarks. We propose a dynamic framework that stress tests unlearning robustness using complex structured queries. Our approach first elicits knowledge from the target model (pre-unlearning) and constructs targeted probes, ranging from simple queries to multi-hop chains, allowing precise control over query difficulty. Our experiments show that the framework (1) shows comparable coverage to existing benchmarks by automatically generating semantically equivalent Q&A probes, (2) aligns with prior evaluations, and (3) uncovers new unlearning failures missed by other benchmarks, particularly in multi-hop settings. Furthermore, activation analyses show that single-hop queries typically follow dominant computation pathways, which are more likely to be disrupted by unlearning methods. In contrast, multi-hop queries tend to use alternative pathways that often remain intact, explaining the brittleness of unlearning techniques in multi-hop settings. Our framework enables practical and scalable evaluation of unlearning methods without the need for manual construction of forget test sets, enabling easier adoption for real-world applications. We release the pip package and the code at https://sites.google.com/view/unlearningmirage/home.
Ähnliche Arbeiten
Rethinking the Inception Architecture for Computer Vision
2016 · 30.734 Zit.
MobileNetV2: Inverted Residuals and Linear Bottlenecks
2018 · 25.059 Zit.
CBAM: Convolutional Block Attention Module
2018 · 21.895 Zit.
An Image is Worth 16x16 Words: Transformers for Image Recognition at Scale
2020 · 21.518 Zit.
Xception: Deep Learning with Depthwise Separable Convolutions
2017 · 18.748 Zit.