Lucene search
K

5 matches found

Packet Storm News
Packet Storm News
added 2025/06/11 12:0 a.m.4 views

Prompt Attacks Reveal Superficial Knowledge Removal in Unlearning Methods

In this work, we show that some machine unlearning methods may fail when subjected to straightforward prompt attacks. We systematically evaluate eight unlearning techniques across three model families, and employ output-based, logit-based, and probe analysis to determine to what extent supposedly...

6.9AI score
Exploits0
Packet Storm News
Packet Storm News
added 2025/06/10 12:0 a.m.5 views

SoK: Machine Unlearning for Large Language Models

Large language model LLM unlearning has become a critical topic in machine learning, aiming to eliminate the influence of specific training data or knowledge without retraining the model from scratch. A variety of techniques have been proposed, including Gradient Ascent, model editing, and...

7AI score
Exploits0
Packet Storm News
Packet Storm News
added 2025/05/13 12:0 a.m.4 views

MUBox: a Critical Evaluation Framework of Deep Machine Unlearning

Recent legal frameworks have mandated the right to be forgotten, obligating the removal of specific data upon user requests. Machine Unlearning has emerged as a promising solution by selectively removing learned information from machine learning models. This paper presents MUBox, a comprehensive...

6.7AI score
Exploits0
Packet Storm News
Packet Storm News
added 2025/05/12 12:0 a.m.3 views

Mirror Mirror on the Wall, Have I Forgotten It All? A New Framework for Evaluating Machine Unlearning

Machine unlearning methods take a model trained on a dataset and a forget set, then attempt to produce a model as if it had only been trained on the examples not in the forget set. We empirically show that an adversary is able to distinguish between a mirror model a control model produced by...

6.8AI score
Exploits0
Packet Storm News
Packet Storm News
added 2025/04/29 12:0 a.m.6 views

Erased but Not Forgotten: How Backdoors Compromise Concept Erasure

The expansion of large-scale text-to-image diffusion models has raised growing concerns about their potential to generate undesirable or harmful content, ranging from fabricated depictions of public figures to sexually explicit images. To mitigate these risks, prior work has devised machine...

6.9AI score
Exploits0
Rows per page
Query Builder