GONE: Structural Knowledge Unlearning via Neighborhood-Expanded Distribution Shaping
arXiv cs.CL / 3/16/2026
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Key Points
- The paper introduces GONE, a graph-based benchmark for evaluating knowledge unlearning of structured knowledge graph facts in LLMs, highlighting three effects: direct fact removal, reasoning-based leakage, and catastrophic forgetting.
- It presents Neighborhood-Expanded Distribution Shaping (NEDS), a framework that uses graph connectivity to identify anchor neighbors and enforce a precise boundary between the forgotten fact and its semantic neighborhood.
- Evaluations on LLaMA-3-8B and Mistral-7B across multiple editing/unlearning methods show NEDS achieving top performance (1.000 unlearning efficacy and 0.839 locality) on GONE and other benchmarks.
- The work underscores safety, privacy, and IP implications of knowledge unlearning in structured data and provides code at the provided URL.
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