Denoising Concept Vectors with Sparse Autoencoders for Improved Language Model Steering
Denoising Concept Vectors with Sparse Autoencoders for Improved Language Model Steering
Linear Concept Vectors have proven effective for steering large language models (LLMs). While existing approaches like linear probing and difference-in-means derive these vectors from LLM hidden representations, diverse data introduces noises (i.e., irrelevant features) that challenge steering robustness. To address this, we propose Sparse Autoencoder-Denoised Concept Vectors (SDCV), which uses Sparse Autoencoders to filter out noisy features from hidden representations. When applied to linear probing and difference-in-means, our method improves their steering success rates. We validate our noise hypothesis through counterfactual experiments and feature visualizations.
Haiyan Zhao、Xuansheng Wu、Fan Yang、Bo Shen、Ninghao Liu、Mengnan Du
计算技术、计算机技术
Haiyan Zhao,Xuansheng Wu,Fan Yang,Bo Shen,Ninghao Liu,Mengnan Du.Denoising Concept Vectors with Sparse Autoencoders for Improved Language Model Steering[EB/OL].(2025-05-20)[2025-07-25].https://arxiv.org/abs/2505.15038.点此复制
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