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HyperSteer: Activation Steering at Scale with Hypernetworks

HyperSteer: Activation Steering at Scale with Hypernetworks

来源:Arxiv_logoArxiv
英文摘要

Steering language models (LMs) by modifying internal activations is a popular approach for controlling text generation. Unsupervised dictionary learning methods, e.g., sparse autoencoders, can be scaled to produce many steering vectors, but lack guarantees on the individual efficacy of each vector and control over the coverage of relevant steering tasks. In contrast, supervised methods for constructing steering vectors are targeted and effective, but require more data collection and training for each additional steering vector produced. In this work, we introduce HyperSteer, a family of hypernetwork-based architectures which are trained end-to-end to generate steering vectors conditioned on the natural language steering prompts and the internals of the steered LM. In our evaluations, we show that scaling HyperSteer with thousands of steering prompts exceeds the performance of state-of-the-art activation steering methods, even on steering prompts never seen during training. Moreover, HyperSteer performs on par with steering-via-prompting.

Jiuding Sun、Sidharth Baskaran、Zhengxuan Wu、Michael Sklar、Christopher Potts、Atticus Geiger

计算技术、计算机技术

Jiuding Sun,Sidharth Baskaran,Zhengxuan Wu,Michael Sklar,Christopher Potts,Atticus Geiger.HyperSteer: Activation Steering at Scale with Hypernetworks[EB/OL].(2025-06-03)[2025-06-15].https://arxiv.org/abs/2506.03292.点此复制

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