CLLGSep 29, 2025

ProxyAttn: Guided Sparse Attention via Representative Heads

arXiv:2509.24745v16 citationsh-index: 15Has Code
Originality Incremental advance
AI Analysis

This addresses efficiency bottlenecks in LLMs for long-text tasks, offering an incremental improvement over existing sparse attention methods.

The paper tackles the performance degradation of block sparse attention in LLMs at high sparsity rates by proposing ProxyAttn, a training-free algorithm that uses representative heads for fine-grained block estimation, achieving up to 10.3x attention acceleration and 2.4x prefilling acceleration without significant loss.

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 training-free sparse attention algorithm that achieves more precise block estimation by compressing the dimension of attention heads. Based on our observation of the similarity among multiple attention heads, we use the scores of pooled representative heads to approximate the scores for all heads. To account for the varying sparsity among heads, we also propose a block-aware dynamic budget estimation method. By combining the scores from representative proxy heads with multi-head dynamic budgets, we achieve a more fine-grained block importance evaluation at low computational cost. Experiments on a variety of mainstream models and extensive benchmarks confirm the underlying similarity among attention heads. Leveraging a fine-grained estimation, the proposed method achieves substantial gains in performance and efficiency compared to existing methods. More precisely, ProxyAttn can achieve up to 10.3x attention acceleration and 2.4x prefilling acceleration without significant performance loss. Our code is available at https://github.com/wyxstriker/ProxyAttn.

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