Topic: RAG

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This page shows the most relevant public items for RAG, ranked by trend activity and review signal. Use weekly for fast changes, monthly for more stable patterns, and all-time for evergreen picks.

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  1. MASCOT: Towards Multi-Agent Socio-Collaborative Companion Systems

    PaperJan 20, 2026arxiv.orgYiyang Wang, Yiqiao Jin, Alex Cabral, Josiah Hester

    Multi-agent systems (MAS) have recently emerged as promising socio-collaborative companions for emotional and cognitive support. However, these systems frequently suffer from persona collapse--wher...

  2. Dynamic Role Assignment for Multi-Agent Debate

    PaperJan 23, 2026arxiv.orgMiao Zhang, Junsik Kim, Siyuan Xiang, Jian Gao, Cheng Cao

    Multi-agent large language model (LLM) and vision-language model (VLM) debate systems employ specialized roles for complex problem-solving, yet model specializations are not leveraged to decide whi...

  3. Phase Transition for Budgeted Multi-Agent Synergy

    PaperJan 24, 2026arxiv.orgBang Liu, Linglong Kong, Jian Pei

    Multi-agent systems can improve reliability, yet under a fixed inference budget they often help, saturate, or even collapse. We develop a minimal and calibratable theory that predicts these regimes...

  4. Epistemic Context Learning: Building Trust the Right Way in LLM-Based Multi-Agent Systems

    PaperJan 29, 2026arxiv.orgRuiwen Zhou, Maojia Song, Xiaobao Wu, Sitao Cheng, Xunjian Yin, Yuxi Xie, Zhuoqun Hao, Wenyue Hua, Liangming Pan, Soujanya Poria, Min-Yen Kan

    Individual agents in multi-agent (MA) systems often lack robustness, tending to blindly conform to misleading peers. We show this weakness stems from both sycophancy and inadequate ability to evalu...

  5. Learning Decentralized LLM Collaboration with Multi-Agent Actor Critic

    PaperFeb 4, 2026arxiv.orgShuo Liu, Tianle Chen, Ryan Amiri, Christopher Amato

    Recent work has explored optimizing LLM collaboration through Multi-Agent Reinforcement Learning (MARL). However, most MARL fine-tuning approaches rely on predefined execution protocols, which ofte...

  6. Learning to Recommend Multi-Agent Subgraphs from Calling Trees

    PaperJan 29, 2026arxiv.orgXinyuan Song, Liang Zhao

    Multi-agent systems (MAS) increasingly solve complex tasks by orchestrating agents and tools selected from rapidly growing marketplaces. As these marketplaces expand, many candidates become functio...

  7. MonoScale: Scaling Multi-Agent System with Monotonic Improvement

    PaperJan 30, 2026arxiv.orgShuai Shao, Yixiang Liu, Bingwei Lu, Weinan Zhang

    In recent years, LLM-based multi-agent systems (MAS) have advanced rapidly, using a router to decompose tasks and delegate subtasks to specialized agents. A natural way to expand capability is to s...

  8. Scaling Multiagent Systems with Process Rewards

    PaperFeb 4, 2026arxiv.orgEd Li, Junyu Ren, Cat Yan

    While multiagent systems have shown promise for tackling complex tasks via specialization, finetuning multiple agents simultaneously faces two key challenges: (1) credit assignment across agents, a...

  9. Evolving Interpretable Constitutions for Multi-Agent Coordination

    PaperJan 31, 2026arxiv.orgUjwal Kumar, Alice Saito, Hershraj Niranjani, Rayan Yessou, Phan Xuan Tan

    Constitutional AI has focused on single-model alignment using fixed principles. However, multi-agent systems create novel alignment challenges through emergent social dynamics. We present Constitut...

  10. Multi-Agent Teams Hold Experts Back

    PaperFeb 9, 2026arxiv.orgAneesh Pappu, Batu El, Hancheng Cao, Carmelo di Nolfo, Yanchao Sun, Meng Cao, James Zou

    Multi-agent LLM systems are increasingly deployed as autonomous collaborators, where agents interact freely rather than execute fixed, pre-specified workflows. In such settings, effective coordinat...

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