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Sparse Activation Editing for Reliable Instruction Following in Narratives

Published 22 May 2025 in cs.CL, cs.AI, and cs.HC | (2505.16505v1)

Abstract: Complex narrative contexts often challenge LLMs' ability to follow instructions, and existing benchmarks fail to capture these difficulties. To address this, we propose Concise-SAE, a training-free framework that improves instruction following by identifying and editing instruction-relevant neurons using only natural language instructions, without requiring labelled data. To thoroughly evaluate our method, we introduce FreeInstruct, a diverse and realistic benchmark of 1,212 examples that highlights the challenges of instruction following in narrative-rich settings. While initially motivated by complex narratives, Concise-SAE demonstrates state-of-the-art instruction adherence across varied tasks without compromising generation quality.

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