Value-Decomposition Networks For Cooperative Multi-Agent Learning
About
We study the problem of cooperative multi-agent reinforcement learning with a single joint reward signal. This class of learning problems is difficult because of the often large combined action and observation spaces. In the fully centralized and decentralized approaches, we find the problem of spurious rewards and a phenomenon we call the "lazy agent" problem, which arises due to partial observability. We address these problems by training individual agents with a novel value decomposition network architecture, which learns to decompose the team value function into agent-wise value functions. We perform an experimental evaluation across a range of partially-observable multi-agent domains and show that learning such value-decompositions leads to superior results, in particular when combined with weight sharing, role information and information channels.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Multi-Agent Reinforcement Learning | SMAC (test) | Win Rate (2s3z)98.5 | 56 | |
| Multi-Agent Reinforcement Learning | SMAC v2 (test) | Win Rate (Protoss 5 Units)46 | 35 | |
| Multi-Agent Reinforcement Learning | MPE Speaker-Listener | Return27.9 | 17 | |
| Bike-sharing redistribution | London 30% initial inventory ratio (test) | Region 1 Count1.60e+3 | 16 | |
| Bike-sharing redistribution | London 20% initial inventory ratio (test) | Region 1 Count1.36e+3 | 16 | |
| Bike Redistribution | Washington D.C. (Region 2) | Count @ 5% Threshold269 | 16 | |
| Cooperative Multi-Agent Reinforcement Learning | Crypto (last 2% of train) | Mean Episodic Reward47.7 | 13 | |
| Cooperative Multi-Agent Reinforcement Learning | Speaker-Listener (last 2% of train) | Mean Episodic Reward-25.68 | 13 | |
| Cooperative Multi-Agent Reinforcement Learning | Reference (last 2% of train) | Mean Episodic Reward-38.44 | 13 | |
| Cooperative Multi-Agent Reinforcement Learning | Disperse (last 2% of train) | Mean Episodic Reward-2.59 | 13 |