Multi Agent Reinforcement Learning


Multi-agent reinforcement learning is the process of training multiple agents to interact and collaborate in a shared environment.

AgentOCR: Reimagining Agent History via Optical Self-Compression

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Jan 08, 2026
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AT$^2$PO: Agentic Turn-based Policy Optimization via Tree Search

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Jan 08, 2026
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RAAR: Retrieval Augmented Agentic Reasoning for Cross-Domain Misinformation Detection

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Jan 08, 2026
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Transformer-based Multi-agent Reinforcement Learning for Separation Assurance in Structured and Unstructured Airspaces

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Jan 07, 2026
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SimRPD: Optimizing Recruitment Proactive Dialogue Agents through Simulator-Based Data Evaluation and Selection

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Jan 08, 2026
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MiMo-V2-Flash Technical Report

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Jan 08, 2026
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SimuAgent: An LLM-Based Simulink Modeling Assistant Enhanced with Reinforcement Learning

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Jan 08, 2026
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ResMAS: Resilience Optimization in LLM-based Multi-agent Systems

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Jan 08, 2026
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Hierarchical GNN-Based Multi-Agent Learning for Dynamic Queue-Jump Lane and Emergency Vehicle Corridor Formation

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Jan 07, 2026
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Sensor to Pixels: Decentralized Swarm Gathering via Image-Based Reinforcement Learning

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Jan 06, 2026
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