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CRISP: Persistent Concept Unlearning via Sparse Autoencoders

2 Pith papers cite this work. Polarity classification is still indexing.

2 Pith papers citing it
abstract

As large language models (LLMs) are increasingly deployed in real-world applications, the need to selectively remove unwanted knowledge while preserving model utility has become paramount. Recent work has explored sparse autoencoders (SAEs) to perform precise interventions on monosemantic features. However, most SAE-based methods operate at inference time, which does not create persistent changes in the model's parameters. Such interventions can be bypassed or reversed by malicious actors with parameter access. We introduce CRISP, a parameter-efficient method for persistent concept unlearning using SAEs. CRISP automatically identifies salient SAE features across multiple layers and suppresses their activations. We experiment with two LLMs and show that our method outperforms prior approaches on safety-critical unlearning tasks from the WMDP benchmark, successfully removing harmful knowledge while preserving general and in-domain capabilities. Feature-level analysis reveals that CRISP achieves semantically coherent separation between target and benign concepts, allowing precise suppression of the target features.

fields

cs.AI 1 cs.LG 1

years

2026 2

representative citing papers

Interpretability Can Be Actionable

cs.LG · 2026-05-11 · conditional · novelty 6.0

Interpretability research should be judged by actionability—the degree to which its insights support concrete decisions and interventions—rather than explanatory power alone.

citing papers explorer

Showing 2 of 2 citing papers.

  • Interpretability Can Be Actionable cs.LG · 2026-05-11 · conditional · none · ref 61 · internal anchor

    Interpretability research should be judged by actionability—the degree to which its insights support concrete decisions and interventions—rather than explanatory power alone.

  • Latent Agents: A Post-Training Procedure for Internalized Multi-Agent Debate cs.AI · 2026-04-27 · unverdicted · none · ref 1 · internal anchor

    Two-stage fine-tuning distills multi-agent debate into single LLMs, matching performance at 93% lower token cost while revealing agent-specific activation subspaces for steering.