Many real-world scenarios involve teams of agents that have to coordinate their actions to reach a shared goal. We focus on the setting in which a team of agents faces an opponent in a zero-sum, imperfect-information game. Team members can coordinate their strategies before the beginning of the game, but are unable to communicate during the playing phase of the game. This is the case, for example, in Bridge, collusion in poker, and collusion in bidding. In this setting, model-free RL methods are oftentimes unable to capture coordination because agents' policies are executed in a decentralized fashion. Our first contribution is a game-theoretic centralized training regimen to effectively perform trajectory sampling so as to foster team c...
The major objective of this dissertation is extending the capabilities of game theoretic distributed...
We describe a generalized Q-learning type algorithm for reinforcement learning in competitive multi-...
The field of convention emergence studies how agents involved in repeated coordination games can rea...
Many real-world scenarios involve teams of agents that have to coordinate their actions to reach a s...
While various multi-agent reinforcement learning methods have been proposed in cooperative settings,...
ABSTRACT The ad hoc coordination problem is to design an ad hoc agent which is able to achieve optim...
In this paper, we address multi-agent decision problems where all agents share a common goal. This c...
Game theorys prescriptive power typically relies on full rationality and/or self-play interactions. ...
Whether in groups of humans or groups of computer agents, collaboration is most effective between in...
We present a new method for learning good strategies in zero-sum Markov games in which each side is ...
AbstractWe consider the following signaling game. Nature plays first from the set {1,2}. Player 1 (t...
We present a new method for learning good strategies in zero-sum Markov games in which each side is...
We propose a method for learning multi-agent policies to compete against multiple opponents. The met...
Multi-Agent systems naturally arise in a variety of domains such as robotics, distributed control an...
Many state-of-the-art cooperative multi-agent reinforcement learning (MARL) approaches, such as MADD...
The major objective of this dissertation is extending the capabilities of game theoretic distributed...
We describe a generalized Q-learning type algorithm for reinforcement learning in competitive multi-...
The field of convention emergence studies how agents involved in repeated coordination games can rea...
Many real-world scenarios involve teams of agents that have to coordinate their actions to reach a s...
While various multi-agent reinforcement learning methods have been proposed in cooperative settings,...
ABSTRACT The ad hoc coordination problem is to design an ad hoc agent which is able to achieve optim...
In this paper, we address multi-agent decision problems where all agents share a common goal. This c...
Game theorys prescriptive power typically relies on full rationality and/or self-play interactions. ...
Whether in groups of humans or groups of computer agents, collaboration is most effective between in...
We present a new method for learning good strategies in zero-sum Markov games in which each side is ...
AbstractWe consider the following signaling game. Nature plays first from the set {1,2}. Player 1 (t...
We present a new method for learning good strategies in zero-sum Markov games in which each side is...
We propose a method for learning multi-agent policies to compete against multiple opponents. The met...
Multi-Agent systems naturally arise in a variety of domains such as robotics, distributed control an...
Many state-of-the-art cooperative multi-agent reinforcement learning (MARL) approaches, such as MADD...
The major objective of this dissertation is extending the capabilities of game theoretic distributed...
We describe a generalized Q-learning type algorithm for reinforcement learning in competitive multi-...
The field of convention emergence studies how agents involved in repeated coordination games can rea...