Multi Agent Reinforcement Learning


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

MaRCA: Multi-Agent Reinforcement Learning for Dynamic Computation Allocation in Large-Scale Recommender Systems

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Dec 30, 2025
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Reinforcement Learning-Augmented LLM Agents for Collaborative Decision Making and Performance Optimization

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Dec 31, 2025
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Heterogeneity in Multi-Agent Reinforcement Learning

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Dec 28, 2025
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Reinforcement Networks: novel framework for collaborative Multi-Agent Reinforcement Learning tasks

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Dec 28, 2025
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Beamforming for Massive MIMO Aerial Communications: A Robust and Scalable DRL Approach

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Dec 29, 2025
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Agentic AI for Autonomous Defense in Software Supply Chain Security: Beyond Provenance to Vulnerability Mitigation

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Dec 29, 2025
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RSAgent: Learning to Reason and Act for Text-Guided Segmentation via Multi-Turn Tool Invocations

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Dec 30, 2025
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SAMP-HDRL: Segmented Allocation with Momentum-Adjusted Utility for Multi-agent Portfolio Management via Hierarchical Deep Reinforcement Learning

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Dec 28, 2025
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ROAD: Reflective Optimization via Automated Debugging for Zero-Shot Agent Alignment

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Dec 30, 2025
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PHANTOM: Physics-Aware Adversarial Attacks against Federated Learning-Coordinated EV Charging Management System

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Dec 26, 2025
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