15

Spectral Attention Steering for Prompt Highlighting

Weixian Waylon Li
Yuchen Niu
Yongxin Yang
Keshuang Li
Tiejun Ma
Shay B. Cohen
Main:10 Pages
10 Figures
Bibliography:5 Pages
14 Tables
Appendix:12 Pages
Abstract

Attention steering is an important technique for controlling model focus, enabling capabilities such as prompt highlighting, where the model prioritises user-specified text. However, existing attention steering methods require explicit storage of the full attention matrix, making them incompatible with memory-efficient implementations like FlashAttention. We introduce Spectral Editing Key Amplification (SEKA), a training-free steering method that tackles this by directly editing key embeddings before attention computation. SEKA uses spectral decomposition to steer key embeddings towards latent directions that amplify attention scores for certain tokens. We extend this to Adaptive SEKA (AdaSEKA), a query-adaptive variant that uses a training-free routing mechanism to dynamically combine multiple expert subspaces based on the prompt's semantic intent. Our experiments show both methods significantly outperform strong baselines on standard steering benchmarks while adding much lower latency and memory overhead, in compatibility with optimised attention.

View on arXiv
Comments on this paper