Learning to cooperate with other agents is challenging when those agents also possess the ability to adapt to our own behavior. Practical and theoretical approaches to learning in cooperative settings typically assume that other agents' behaviors are stationary, or else make very specific assumptions about other agents' learning processes. The goal of this work is to understand whether we can reliably learn to cooperate with other agents without such restrictive assumptions, which are unlikely to hold in real-world applications. Our main contribution is a set of impossibility results, which show that no learning algorithm can reliably learn to cooperate with all possible adaptive partners in a repeated matrix game, even if that partner is g...
Treball fi de màster de: Master in Intelligent Interactive SystemsTutors: Vicenç Gómez Cerdà i Martí...
AbstractRepeated interaction between individuals is the main mechanism for maintaining cooperation i...
Reinforcement learning can provide a robust and natural means for agents to learn how to coordinate ...
In this work, we ask for and answer what makes classical reinforcement learning cooperative. Coopera...
We develop a theoretical model to study strategic interactions between adaptive learning algorithms....
The Nash equilibrium, the main solution concept in analytical game theory, cannot make precise predi...
In the future, artificial learning agents are likely to become increasingly widespread in our societ...
AbstractThis paper surveys recent work on learning in games and delineates the boundary between form...
Agents that interact in a distributed environment might increase their utility by behaving optimally...
The goal of a self-interested agent within a multi-agent system is to maximize its utility over time...
We study the problem of designing autonomous agents that can learn to cooperate effectively with a p...
Ad hoc teamwork problem describes situations where an agent has to cooperate with previously unseen ...
a b s t r a c t Experimental and Monte Carlo methods were used to test theoretical predictions about...
A learning rule is adaptive if it is simple to compute, requires little information about the action...
Cooperative multi-agent reinforcement learning (MARL) approaches tackle the challenge of finding eff...
Treball fi de màster de: Master in Intelligent Interactive SystemsTutors: Vicenç Gómez Cerdà i Martí...
AbstractRepeated interaction between individuals is the main mechanism for maintaining cooperation i...
Reinforcement learning can provide a robust and natural means for agents to learn how to coordinate ...
In this work, we ask for and answer what makes classical reinforcement learning cooperative. Coopera...
We develop a theoretical model to study strategic interactions between adaptive learning algorithms....
The Nash equilibrium, the main solution concept in analytical game theory, cannot make precise predi...
In the future, artificial learning agents are likely to become increasingly widespread in our societ...
AbstractThis paper surveys recent work on learning in games and delineates the boundary between form...
Agents that interact in a distributed environment might increase their utility by behaving optimally...
The goal of a self-interested agent within a multi-agent system is to maximize its utility over time...
We study the problem of designing autonomous agents that can learn to cooperate effectively with a p...
Ad hoc teamwork problem describes situations where an agent has to cooperate with previously unseen ...
a b s t r a c t Experimental and Monte Carlo methods were used to test theoretical predictions about...
A learning rule is adaptive if it is simple to compute, requires little information about the action...
Cooperative multi-agent reinforcement learning (MARL) approaches tackle the challenge of finding eff...
Treball fi de màster de: Master in Intelligent Interactive SystemsTutors: Vicenç Gómez Cerdà i Martí...
AbstractRepeated interaction between individuals is the main mechanism for maintaining cooperation i...
Reinforcement learning can provide a robust and natural means for agents to learn how to coordinate ...