FROC: A Unified Framework with Risk-Optimized Control for Machine Unlearning in LLMs
Si Qi Goh, Yongsen Zheng, Ziyao Liu, Sami Hormi, Kwok-Yan Lam

TL;DR
FROC introduces a risk-aware, unified framework for machine unlearning in large language models, enabling effective control over forgetting and utility trade-offs through a conformal risk formulation.
Contribution
It presents a novel risk-optimized control framework for MU in LLMs, with a conformal-style risk model and data-driven risk estimation methods.
Findings
FROC provides stable, interpretable risk landscapes.
It reveals consistent relationships between unlearning configurations, semantic shift, and utility.
FROC enables practical risk management in large-scale LLM unlearning.
Abstract
Machine unlearning (MU) seeks to eliminate the influence of specific training examples from deployed models. As large language models (LLMs) become widely used, managing risks arising from insufficient forgetting or utility loss is increasingly crucial. Current MU techniques lack effective mechanisms for evaluating and controlling these risks, hindering the selection of strategies that appropriately balance safety and utility, and raising trust concerns surrounding the "right to be forgotten." To address these issues, we propose FROC, a unified framework with Risk-Optimized Control for machine unlearning in LLMs. FROC is built around a conformal-style risk-control formulation that expresses a user-specified risk budget on unlearning behavior. This probability-based constraint enables FROC to compare MU strategies, identify feasible operating regions, and guide hyperparameter selection…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI) · Machine Learning and Data Classification · Adversarial Robustness in Machine Learning
