DySCO: Dynamic Attention-Scaling Decoding for Long-Context LMs
AI 摘要
DySCO通过动态调整注意力权重,提升长文本语言模型在长上下文推理任务中的性能。
主要贡献
- 提出一种新的解码算法DySCO
- 利用检索头动态调整注意力权重
- 在多个长文本推理基准上验证了有效性
方法论
DySCO使用检索头识别相关token,并动态增加其注意力权重,从而在解码时更好地利用上下文。
原文摘要
Understanding and reasoning over long contexts is a crucial capability for language models (LMs). Although recent models support increasingly long context windows, their accuracy often deteriorates as input length grows. In practice, models often struggle to keep attention aligned with the most relevant context throughout decoding. In this work, we propose DySCO, a novel decoding algorithm for improving long-context reasoning. DySCO leverages retrieval heads--a subset of attention heads specialized for long-context retrieval--to identify task-relevant tokens at each decoding step and explicitly up-weight them. By doing so, DySCO dynamically adjusts attention during generation to better utilize relevant context. The method is training-free and can be applied directly to any off-the-shelf LMs. Across multiple instruction-tuned and reasoning models, DySCO consistently improves performance on challenging long-context reasoning benchmarks, yielding relative gains of up to 25% on MRCR and LongBenchV2 at 128K context length with modest additional compute. Further analysis highlights the importance of both dynamic attention rescaling and retrieval-head-guided selection for the effectiveness of the method, while providing interpretability insights into decoding-time attention behavior. Our code is available at https://github.com/princeton-pli/DySCO.