AI RESEARCH

ProxyAttn: Guided Sparse Attention via Representative Heads

arXiv CS.CL

ArXi:2509.24745v2 Announce Type: replace The quadratic complexity of attention mechanisms limits the efficiency of Large Language Models (LLMs) on long-text tasks. Recently, methods that dynamically estimate block importance have enabled efficient block sparse attention, leading to significant acceleration in long-text pre-filling of LLMs. However, their coarse-grained estimation inevitably leads to performance degradation at high sparsity rates. In this work, we propose ProxyAttn, a