Multiagent reinforcement learning holds considerable promise to deal with cooperative multiagent tasks. Unfortunately, the only global reward shared by all agents in the cooperative tasks may lead to the lazy agent problem. To cope with such a problem, we propose a generating individual intrinsic reward algorithm, which introduces an intrinsic reward encoder to generate an individual intrinsic reward for each agent and utilizes the hypernetworks as the decoder to help to estimate the individual action values of the decomposition methods based on the generated individual intrinsic reward. Experimental results in the StarCraft II micromanagement benchmark prove that the proposed algorithm can increase learning efficiency and improve policy pe...
How can a population of reinforcement learning agents autonomously learn a diversity of cooperative ...
VDN and QMIX are two popular value-based algorithms for cooperative MARL that learn a centralized ac...
The StarCraft II Multi-Agent Challenge (SMAC) was created to be a challenging benchmark problem for ...
Reward machines have recently been proposed as a means of encoding team tasks in cooperative multi-a...
Reward machines have recently been proposed as a means of encoding team tasks in cooperative multi-a...
Abstract. A novel approach for the reward distribution in multi-agent reinforcement learning is prop...
Efficient exploration is important for reinforcement learners to achieve high rewards. In multi-agen...
Efficient exploration is important for reinforcement learners to achieve high rewards. In multi-agen...
Efficient exploration is important for reinforcement learners to achieve high rewards. In multi-agen...
This paper focuses on a multi-agent cooperation which is generally difficult to be achieved without ...
Distributed multiagent reinforcement learning in the same environment is prohibitively hard, due to ...
Distributed multiagent reinforcement learning in the same environment is prohibitively hard, due to ...
Cooperative multi-agent reinforcement learning (MARL) faces significant scalability issues due to st...
In this paper we focus on the problem of designing a collective of autonomous agents that individual...
Current approaches to multi-agent cooperation rely heavily on centralized mechanisms or explicit com...
How can a population of reinforcement learning agents autonomously learn a diversity of cooperative ...
VDN and QMIX are two popular value-based algorithms for cooperative MARL that learn a centralized ac...
The StarCraft II Multi-Agent Challenge (SMAC) was created to be a challenging benchmark problem for ...
Reward machines have recently been proposed as a means of encoding team tasks in cooperative multi-a...
Reward machines have recently been proposed as a means of encoding team tasks in cooperative multi-a...
Abstract. A novel approach for the reward distribution in multi-agent reinforcement learning is prop...
Efficient exploration is important for reinforcement learners to achieve high rewards. In multi-agen...
Efficient exploration is important for reinforcement learners to achieve high rewards. In multi-agen...
Efficient exploration is important for reinforcement learners to achieve high rewards. In multi-agen...
This paper focuses on a multi-agent cooperation which is generally difficult to be achieved without ...
Distributed multiagent reinforcement learning in the same environment is prohibitively hard, due to ...
Distributed multiagent reinforcement learning in the same environment is prohibitively hard, due to ...
Cooperative multi-agent reinforcement learning (MARL) faces significant scalability issues due to st...
In this paper we focus on the problem of designing a collective of autonomous agents that individual...
Current approaches to multi-agent cooperation rely heavily on centralized mechanisms or explicit com...
How can a population of reinforcement learning agents autonomously learn a diversity of cooperative ...
VDN and QMIX are two popular value-based algorithms for cooperative MARL that learn a centralized ac...
The StarCraft II Multi-Agent Challenge (SMAC) was created to be a challenging benchmark problem for ...