Consistency-Aware Editing for Entity-level Unlearning in Language Models
Xiaoqi Han, V\'ictor Guti\'errez-Basulto, Ru Li, Xiaoli Li, Jiye Liang, Jeff Z. Pan

TL;DR
This paper introduces a novel consistency-aware editing framework for efficient and comprehensive entity-level unlearning in large language models, improving robustness and scalability over existing methods.
Contribution
It proposes a new CAE framework that aggregates diverse prompts and learns low-rank updates with a consistency regularizer for effective unlearning.
Findings
CAE outperforms traditional unlearning methods in accuracy and robustness.
It requires only tens of prompts for effective entity removal.
Provides insights into internal knowledge representation of entities in LLMs.
Abstract
Large language models (LLMs) risk retaining sensitive, copyrighted, or harmful information from their training data. Entity-level unlearning addresses this issue by removing all knowledge of a specific entity while preserving the model's overall capabilities. Existing approaches typically rely on full-model fine-tuning or prompt-based interventions, which can be computationally expensive or brittle when handling paraphrased queries. Recently, model editing has emerged as an efficient alternative for updating knowledge in LLMs, offering a promising direction for unlearning. However, existing editing techniques are typically designed for instance-level updates, modifying responses to specific attributes of an entity rather than eliminating all knowledge associated with the entity. In this paper, we investigate how editing techniques can be adapted for effective and efficient entity-level…
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Taxonomy
TopicsTopic Modeling · Advanced Graph Neural Networks · Artificial Intelligence in Healthcare and Education
