Multi-agent reinforcement learning (MRL) is a growing area of research. What makes it particularly challenging is that multiple learners render each other\u27s environments non-stationary. In addition to adapting their behaviors to other learning agents, online learners must also provide assurances about their online performance in order to promote user trust of adaptive agent systems deployed in real world applications. In this article, instead of developing new algorithms with such assurances, we study the question of safety in online performance of some existing MRL algorithms. We identify the key notion of reactivity of a learner by analyzing how an algorithm (PHC-Exploiter), designed to exploit some simpler opponents, can itself be exp...
Reinforcement learning agents interacting with a complex environment like the real world are unlikel...
We study the process of multi-agent reinforcement learning in the context of load bal-ancing in a di...
We expose the danger of reward poisoning in offline multi-agent reinforcement learning (MARL), where...
Multi-agent reinforcement learning (MRL) is a growing area of research. What makes it particularly c...
The aim of multi-agent reinforcement learning systems is to provide interacting agents with the abil...
We present an approach to safely reduce the communication required between agents in a Multi-Agent R...
Reinforcement Learning (RL) agents can solve general problems based on little to no knowledge of the...
Reinforcement learning, especially deep reinforcement learning, has made many advances in the last d...
Typically in reinforcement learning, agents are trained and evaluated on the same environment. Conse...
Despite increasing deployment of agent technologies in several business and industry domains, user c...
Training reinforcement learning agents in real-world environments is costly, particularly for safety...
Many state-of-the-art cooperative multi-agent reinforcement learning (MARL) approaches, such as MADD...
Despite increasing deployment of agent technologies in several business and industry domains, user c...
Reinforcement learning (RL) is a general method for agents to learn optimal control policies through...
Reinforcement learning in complex environments may require supervision to prevent the agent from att...
Reinforcement learning agents interacting with a complex environment like the real world are unlikel...
We study the process of multi-agent reinforcement learning in the context of load bal-ancing in a di...
We expose the danger of reward poisoning in offline multi-agent reinforcement learning (MARL), where...
Multi-agent reinforcement learning (MRL) is a growing area of research. What makes it particularly c...
The aim of multi-agent reinforcement learning systems is to provide interacting agents with the abil...
We present an approach to safely reduce the communication required between agents in a Multi-Agent R...
Reinforcement Learning (RL) agents can solve general problems based on little to no knowledge of the...
Reinforcement learning, especially deep reinforcement learning, has made many advances in the last d...
Typically in reinforcement learning, agents are trained and evaluated on the same environment. Conse...
Despite increasing deployment of agent technologies in several business and industry domains, user c...
Training reinforcement learning agents in real-world environments is costly, particularly for safety...
Many state-of-the-art cooperative multi-agent reinforcement learning (MARL) approaches, such as MADD...
Despite increasing deployment of agent technologies in several business and industry domains, user c...
Reinforcement learning (RL) is a general method for agents to learn optimal control policies through...
Reinforcement learning in complex environments may require supervision to prevent the agent from att...
Reinforcement learning agents interacting with a complex environment like the real world are unlikel...
We study the process of multi-agent reinforcement learning in the context of load bal-ancing in a di...
We expose the danger of reward poisoning in offline multi-agent reinforcement learning (MARL), where...