The past two years have witnessed the meteoric rise of Large Language Model (LLM) -powered multi-agent systems (MAS), which harness collective intelligence and exhibit a remarkable trajectory toward self-evolution. This paradigm has rapidly progressed from manually engineered systems that require bespoke configuration of prompts, tools, roles, and communication protocols toward frameworks capable of automated orchestration. Yet, dominant automatic multi-agent systems, whether generated by external modules or a single LLM agent, largely adhere to a rigid ``generate-once-and-deploy'' paradigm, rendering the resulting systems brittle and ill-prepared for the dynamism and uncertainty of real-world environments. To transcend this limitation, we introduce MAS², a paradigm predicated on the principle of recursive self-generation: a multi-agent system that autonomously architects bespoke multi-agent systems for diverse problems. Technically, we devise a ``generator-implementer-rectifier'' tri-agent team capable of dynamically composing and adaptively rectifying a target agent system in response to real-time task demands. Collaborative Tree Optimization is proposed to train and specialize these meta-agents. Extensive evaluation across seven benchmarks reveals that MAS² achieves performance gains of up to 19. 6\% over state-of-the-art MAS in complex scenarios such as deep research and code generation. Moreover, MAS² exhibits superior cross-backbone generalization, effectively leveraging previously unseen LLMs to yield improvements of up to 15. 1\%. Crucially, these gains are attained without incurring excessive token costs, as MAS² consistently resides on the Pareto frontier of cost-performance trade-offs. The source codes are available at https: //github. com/yeyeyeah2/MAS2.
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Wang et al. (Mon,) studied this question.
www.synapsesocial.com/papers/68f5fcce8d54a28a75cf1bd3 — DOI: https://doi.org/10.48550/arxiv.2509.24323
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