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LLM激活引导方法与模型可解释性研究
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本文研究了大型语言模型中激活引导方法对模型可解释性的影响,通过专家视角方法识别特定概念神经元,发现ExpertLens在模型表示分析中的有效性。

This paper was accepted at the Workshop on Unifying Representations in Neural Models (UniReps) at NeurIPS 2025.

Activation steering methods in large language models (LLMs) have emerged as an effective way to perform targeted updates to enhance generated language without requiring large amounts of adaptation data. We ask whether the features discovered by activation steering methods are interpretable. We identify neurons responsible for specific concepts (e.g., “cat”) using the “finding experts” method from research on activation steering and show that the ExpertLens, i.e., inspection of these neurons provides insights about model representation. We find that ExpertLens representations are stable across models and datasets and closely align with human representations inferred from behavioral data, matching inter-human alignment levels. ExpertLens significantly outperforms the alignment captured by word/sentence embeddings. By reconstructing human concept organization through ExpertLens, we show that it enables a granular view of LLM concept representation. Our findings suggest that ExpertLens is a flexible and lightweight approach for capturing and analyzing model representations.

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大型语言模型 激活引导 模型可解释性 ExpertLens 概念表示
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