In this paper, we propose a new learning technique named message-dropout to improve the performance for multi-agent deep reinforcement learning under two application scenarios: 1) classical multi-agent reinforcement learning with direct message communication among agents and 2) centralized training with decentralized execution. In the first application scenario of multi-agent systems in which direct message communication among agents is allowed, the messagedropout technique drops out the received messages from other agents in a block-wise manner with a certain probability in the training phase and compensates for this effect by multiplying the weights of the dropped-out block units with a correction probability. The applied message-dropout ...
A plethora of real world problems, such as the control of autonomous vehicles and drones, packet de...
We propose a novel formulation of the 'effectiveness problem' in communications, put forth by Shanno...
Agents trained through single-agent reinforcement learning methods such as self-play can provide a g...
Reinforcement learning, especially deep reinforcement learning, has made many advances in the last d...
Multi-Agent systems naturally arise in a variety of domains such as robotics, distributed control an...
The main contributions in this thesis include the selectively decentralized method in solving multi-...
We study multi-agent reinforcement learning (MARL) with centralized training and decentralized execu...
Cooperative multi-agent reinforcement learning (MARL) has achieved significant results, most notably...
Abstract: Communication is crucial in multi-agent reinforcement learning when agents are not able to...
A growing number of real-world control problems require teams of software agents to solve a joint ta...
We consider the problem of multiple agents sensing and acting in environments with the goal of maxim...
Communication is essential for coordination among humans and animals. Therefore, with the introducti...
Communication is a crucial factor for the big multi-agent world to stay organized and productive. Re...
Deep Reinforcement Learning has achieved a plenty of breakthroughs in the past decade. Motivated by ...
Reinforcement learning is the area of machine learning concerned with learning which actions to exec...
A plethora of real world problems, such as the control of autonomous vehicles and drones, packet de...
We propose a novel formulation of the 'effectiveness problem' in communications, put forth by Shanno...
Agents trained through single-agent reinforcement learning methods such as self-play can provide a g...
Reinforcement learning, especially deep reinforcement learning, has made many advances in the last d...
Multi-Agent systems naturally arise in a variety of domains such as robotics, distributed control an...
The main contributions in this thesis include the selectively decentralized method in solving multi-...
We study multi-agent reinforcement learning (MARL) with centralized training and decentralized execu...
Cooperative multi-agent reinforcement learning (MARL) has achieved significant results, most notably...
Abstract: Communication is crucial in multi-agent reinforcement learning when agents are not able to...
A growing number of real-world control problems require teams of software agents to solve a joint ta...
We consider the problem of multiple agents sensing and acting in environments with the goal of maxim...
Communication is essential for coordination among humans and animals. Therefore, with the introducti...
Communication is a crucial factor for the big multi-agent world to stay organized and productive. Re...
Deep Reinforcement Learning has achieved a plenty of breakthroughs in the past decade. Motivated by ...
Reinforcement learning is the area of machine learning concerned with learning which actions to exec...
A plethora of real world problems, such as the control of autonomous vehicles and drones, packet de...
We propose a novel formulation of the 'effectiveness problem' in communications, put forth by Shanno...
Agents trained through single-agent reinforcement learning methods such as self-play can provide a g...