Multi Agent Reinforcement Learning


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

Multi-Agent Video Recommenders: Evolution, Patterns, and Open Challenges

Add code
Apr 02, 2026
Viaarxiv icon

LangMARL: Natural Language Multi-Agent Reinforcement Learning

Add code
Apr 01, 2026
Viaarxiv icon

DeltaMem: Towards Agentic Memory Management via Reinforcement Learning

Add code
Apr 02, 2026
Viaarxiv icon

ProCeedRL: Process Critic with Exploratory Demonstration Reinforcement Learning for LLM Agentic Reasoning

Add code
Apr 02, 2026
Viaarxiv icon

Agent Q-Mix: Selecting the Right Action for LLM Multi-Agent Systems through Reinforcement Learning

Add code
Apr 01, 2026
Viaarxiv icon

Internal State-Based Policy Gradient Methods for Partially Observable Markov Potential Games

Add code
Apr 01, 2026
Viaarxiv icon

PsychAgent: An Experience-Driven Lifelong Learning Agent for Self-Evolving Psychological Counselor

Add code
Apr 02, 2026
Viaarxiv icon

Learning to Play Blackjack: A Curriculum Learning Perspective

Add code
Apr 02, 2026
Viaarxiv icon

ContextBudget: Budget-Aware Context Management for Long-Horizon Search Agents

Add code
Apr 02, 2026
Viaarxiv icon

MemRerank: Preference Memory for Personalized Product Reranking

Add code
Apr 02, 2026
Viaarxiv icon