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Enhancing Multi-Agent Communication through Attention Steering with Context Relevance

About

LLM-based multi-agent systems have demonstrated remarkable performance on complex tasks through collaborative reasoning. However, these systems tend to rapidly accumulate extremely long conversation histories during interaction. As conversations lengthen, relevant information is increasingly diluted by irrelevant context, leading to degraded performance. In this work, we present Agent-Radar, a training-free context management method that dynamically steers each agent's attention toward relevant context with a novel temporal and spatial decay mechanism. Our experiments demonstrate that Agent-Radar outperforms state-of-the-art methods across five different benchmarks, yielding gains of up to 7.64 absolute points. Furthermore, our analysis shows that Agent-Radar remains effective and robust as the number of agents and interaction rounds increases. Finally, the ablation study shows that core components in Agent-Radar are crucial to performance and generalizable in different settings.

Hongxiang Zhang, Yuan Tian, Tianyi Zhang• 2026

Related benchmarks

TaskDatasetResultRank
Question Answering2Wiki--
241
General ReasoningMMLU-Pro
Accuracy69.4
201
Question AnsweringMuSiQue
F1 Score39.72
54
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