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ST-EVO: Towards Generative Spatio-Temporal Evolution of Multi-Agent Communication Topologies

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LLM-powered Multi-Agent Systems (MAS) have emerged as an effective approach towards collaborative intelligence, and have attracted wide research interests. Among them, ``self-evolving'' MAS, treated as a more flexible and powerful technical route, can construct task-adaptive workflows or communication topologies, instead of relying on a predefined static structue template. Current self-evolving MAS mainly focus on Spatial Evolving or Temporal Evolving paradigm, which only considers the single dimension of evolution and does not fully incentivize LLMs' collaborative capability. In this work, we start from a novel Spatio-Temporal perspective by proposing ST-EVO, which supports dialogue-wise communication scheduling with a compact yet powerful flow-matching based Scheduler. To make precise Spatio-Temporal scheduling, ST-EVO can also perceive the uncertainty of MAS, and possesses self-feedback ability to learn from accumulated experience. Extensive experiments on nine benchmarks demonstrate the state-of-the-art performance of ST-EVO, achieving about 5%--25% accuracy improvement.

Xingjian Wu, Xvyuan Liu, Junkai Lu, Siyuan Wang, Xiangfei Qiu, Yang Shu, Jilin Hu, Chenjuan Guo, Bin Yang• 2026

Related benchmarks

TaskDatasetResultRank
Code GenerationHumanEval
Pass@194.36
850
Arithmetic ReasoningMultiArith
Accuracy99.05
181
Multi-hop Question AnsweringHotpotQA
Avg@8 Accuracy92.52
32
Multiple-choice Question AnsweringAQUA
Accuracy86.56
31
Code GenerationDS-1000
Pass@158.65
28
Medical Question AnsweringDDXPlus
Accuracy82.5
28
Knowledge ReasoningMMLU
MMLU Knowledge Reasoning Accuracy89.85
19
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