Multi Agent Reinforcement Learning


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

Data-Centric Interpretability for LLM-based Multi-Agent Reinforcement Learning

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Feb 05, 2026
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WideSeek-R1: Exploring Width Scaling for Broad Information Seeking via Multi-Agent Reinforcement Learning

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Feb 04, 2026
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DELTA: Deliberative Multi-Agent Reasoning with Reinforcement Learning for Multimodal Psychological Counseling

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Feb 04, 2026
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TKG-Thinker: Towards Dynamic Reasoning over Temporal Knowledge Graphs via Agentic Reinforcement Learning

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Feb 05, 2026
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Quantum Reinforcement Learning with Transformers for the Capacitated Vehicle Routing Problem

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Feb 05, 2026
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Agent-Omit: Training Efficient LLM Agents for Adaptive Thought and Observation Omission via Agentic Reinforcement Learning

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Feb 04, 2026
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Autonomous AI Agents for Real-Time Affordable Housing Site Selection: Multi-Objective Reinforcement Learning Under Regulatory Constraints

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Feb 03, 2026
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MedSAM-Agent: Empowering Interactive Medical Image Segmentation with Multi-turn Agentic Reinforcement Learning

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Feb 03, 2026
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Human-Centric Traffic Signal Control for Equity: A Multi-Agent Action Branching Deep Reinforcement Learning Approach

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Feb 03, 2026
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Co2PO: Coordinated Constrained Policy Optimization for Multi-Agent RL

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Feb 03, 2026
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