Feng Wen
2026
MATCH: Modulating Attention via In-Context Retrieval for Long-Context Transformers
Linrui Ma | Chun Hei Lo | Xinyu Wang | Peng Lu | Xihao Yuan | Hanting Chen | Kai Han | Xinghao Chen | Chengjun Zhan | Hanlin xu | Yichun Yin | Lifeng Shang | Feng Wen | Boxing Chen | Yufei Cui
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Linrui Ma | Chun Hei Lo | Xinyu Wang | Peng Lu | Xihao Yuan | Hanting Chen | Kai Han | Xinghao Chen | Chengjun Zhan | Hanlin xu | Yichun Yin | Lifeng Shang | Feng Wen | Boxing Chen | Yufei Cui
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
The quadratic computational cost of traditional attention mechanisms poses a major bottleneck to the scalability and practical deployment of large language models (LLMs), particularly in long-context scenarios. To improve efficiency, existing approaches often enforce rigid structural constraints such as local attention windows. However, these strategies typically lead to substantial performance degradation on tasks requiring precise long-range recall. In this work, we propose MATCH, a scalable and efficient framework that augments sparsified attention mechanisms with dynamically integrated in-context information through an efficient retrieval system. Empirical results show that MATCH significantly improves the performance of sparse-attention models on both synthetic and real-world natural-language tasks. These findings highlight the versatility of MATCH as a general approach for enhancing in-context retrieval capabilities while maintaining the efficiency benefits of sparse attention architectures.