SOTAVerified

Multi-agent Reinforcement Learning

The target of Multi-agent Reinforcement Learning is to solve complex problems by integrating multiple agents that focus on different sub-tasks. In general, there are two types of multi-agent systems: independent and cooperative systems.

Source: Show, Describe and Conclude: On Exploiting the Structure Information of Chest X-Ray Reports

Papers

Showing 14011425 of 1718 papers

TitleStatusHype
Structured Diversification Emergence via Reinforced Organization Control and Hierarchical Consensus Learning0
Contrasting Centralized and Decentralized Critics in Multi-Agent Reinforcement Learning0
MSPM: A Modularized and Scalable Multi-Agent Reinforcement Learning-based System for Financial Portfolio Management0
Neural Recursive Belief States in Multi-Agent Reinforcement Learning0
Towards Multi-agent Reinforcement Learning for Wireless Network Protocol Synthesis0
An Abstraction-based Method to Check Multi-Agent Deep Reinforcement-Learning Behaviors0
Hybrid Information-driven Multi-agent Reinforcement Learning0
Safe Multi-Agent Reinforcement Learning via Shielding0
Data sharing gamesCode0
Fast Sequence Generation with Multi-Agent Reinforcement Learning0
HAMMER: Multi-Level Coordination of Reinforcement Learning Agents via Learned MessagingCode0
Cooperative and Competitive Biases for Multi-Agent Reinforcement Learning0
Solving Common-Payoff Games with Approximate Policy IterationCode0
Coding for Distributed Multi-Agent Reinforcement Learning0
Derivative-Free Policy Optimization for Linear Risk-Sensitive and Robust Control Design: Implicit Regularization and Sample Complexity0
Effective Communications: A Joint Learning and Communication Framework for Multi-Agent Reinforcement Learning over Noisy Channels0
Multi-Agent Reinforcement Learning Based Resource Management in MEC- and UAV-Assisted Vehicular Networks0
FSV: Learning to Factorize Soft Value Function for Cooperative Multi-Agent Reinforcement Learning0
Learning to communicate through imagination with model-based deep multi-agent reinforcement learning0
RMIX: Risk-Sensitive Multi-Agent Reinforcement Learning0
DOP: Off-Policy Multi-Agent Decomposed Policy Gradients0
Communication in Multi-Agent Reinforcement Learning: Intention Sharing0
Robust Multi-Agent Reinforcement Learning Driven by Correlated Equilibrium0
UPDeT: Universal Multi-agent RL via Policy Decoupling with Transformers0
Adaptive Learning Rates for Multi-Agent Reinforcement Learning0
Show:102550
← PrevPage 57 of 69Next →

Benchmark Results

#ModelMetricClaimedVerifiedStatus
1MATD3final agent reward-14Unverified
#ModelMetricClaimedVerifiedStatus
1DRIMAMedian Win Rate15Unverified
#ModelMetricClaimedVerifiedStatus
1Fusion-Multi-Actor-Attention-CriticAverage Reward39Unverified