Learning to cooperate with friends and compete with foes is a key component of multi-agent reinforcement learning. Typically to do so, one requires access to either a model of or interaction with the other agent(s). Here we show how to learn effective strategies for cooperation and competition in an asymmetric information game with no such model or interaction. Our approach is to encourage an agent to reveal or hide their intentions using an information-theoretic regularizer. We consider both the mutual information between goal and action given state, as well as the mutual information between goal and state. We show how to optimize these regularizers in a way that is easy to integrate with policy gradient reinforcement learning. Finally, we...
In this paper we introduce a new multi-agent reinforcement learning algorithm, called exploring self...
International audienceThe authors study experimentally a coordination game with N heterogeneous indi...
While various multi-agent reinforcement learning methods have been proposed in cooperative settings,...
In situations where explicit communication is limited, human collaborators act by learning to: (i) i...
In this paper we study automated agents which are designed to encourage humans to take some actions ...
Diffusion du document : INRA Université Pierre Mendès France, Laboratoire GAEL, BP 47, 38040 Grenobl...
Inferring the information structure of other agents is necessary to derive optimal mechanisms/signal...
Does competition among persuaders increase the extent of information revealed? We study ex ante symm...
We describe a generalized Q-learning type algorithm for reinforcement learning in competitive multi-...
Information sharing is key in building team cognition and enables coordination and cooperation. High...
We study learning statistical properties from strategic agents with private information. In this pro...
In this paper we introduce a new multi-agent reinforcement learning algorithm, called exploring self...
This paper studies how economic agents learn to cooperate when the details of what cooperation means...
This paper presents a formalized communicating process for dealing with information asymmetry betwee...
We study a class of two-player repeated games with incomplete information and informational external...
In this paper we introduce a new multi-agent reinforcement learning algorithm, called exploring self...
International audienceThe authors study experimentally a coordination game with N heterogeneous indi...
While various multi-agent reinforcement learning methods have been proposed in cooperative settings,...
In situations where explicit communication is limited, human collaborators act by learning to: (i) i...
In this paper we study automated agents which are designed to encourage humans to take some actions ...
Diffusion du document : INRA Université Pierre Mendès France, Laboratoire GAEL, BP 47, 38040 Grenobl...
Inferring the information structure of other agents is necessary to derive optimal mechanisms/signal...
Does competition among persuaders increase the extent of information revealed? We study ex ante symm...
We describe a generalized Q-learning type algorithm for reinforcement learning in competitive multi-...
Information sharing is key in building team cognition and enables coordination and cooperation. High...
We study learning statistical properties from strategic agents with private information. In this pro...
In this paper we introduce a new multi-agent reinforcement learning algorithm, called exploring self...
This paper studies how economic agents learn to cooperate when the details of what cooperation means...
This paper presents a formalized communicating process for dealing with information asymmetry betwee...
We study a class of two-player repeated games with incomplete information and informational external...
In this paper we introduce a new multi-agent reinforcement learning algorithm, called exploring self...
International audienceThe authors study experimentally a coordination game with N heterogeneous indi...
While various multi-agent reinforcement learning methods have been proposed in cooperative settings,...