We study fairness through the lens of cooperative multi-agent learning. Our work is motivated by empirical evidence that naive maximization of team reward yields unfair outcomes for individual team members. To address fairness in multi-agent contexts, we introduce team fairness, a group-based fairness measure for multi-agent learning. We then prove that it is possible to enforce team fairness during policy optimization by transforming the team's joint policy into an equivariant map. We refer to our multi-agent learning strategy as Fairness through Equivariance (Fair-E) and demonstrate its effectiveness empirically. We then introduce Fairness through Equivariance Regularization (Fair-ER) as a soft-constraint version of Fair-E and show that i...
This book mainly aims at solving the problems in both cooperative and competitive multi-agent system...
We use simulated soccer to study multiagent learning. Each team's players (agents) share action se...
Developing learning methods which do not discriminate subgroups in the population is the central goa...
Multi-agent systems are complex systems in which multiple autonomous entities, called agents, cooper...
Recent advances in technology allow multi-agent systems to be deployed in cooperation with or as a s...
In many real-world situations, data is distributed across multiple self-interested agents. These age...
Abstract. Typically, multi-agent systems are designed assuming perfectly rational, self-interested a...
We define a fairness solution criterion for multi-agent decision-making problems, where agents have ...
Many multi-agent systems are intended to operate together with or as a service to humans. Typically,...
This paper experimentally investigates cooperative game theory from a normative perspective. Subject...
Working paper du GATE n° 8-2001How do intrinsic motivations such as fairness and reciprocity influen...
We study a multiplayer extension of the well-known Ultimatum Game (UG) through the lens of a reinfor...
In many common tasks for multi-agent systems, assuming individually rational agents leads to inferio...
The number of AI agents in the world is increasing every day and they will need to interact with ea...
This thesis motivates and introduces a way to model fairness considerations in cooperative game theo...
This book mainly aims at solving the problems in both cooperative and competitive multi-agent system...
We use simulated soccer to study multiagent learning. Each team's players (agents) share action se...
Developing learning methods which do not discriminate subgroups in the population is the central goa...
Multi-agent systems are complex systems in which multiple autonomous entities, called agents, cooper...
Recent advances in technology allow multi-agent systems to be deployed in cooperation with or as a s...
In many real-world situations, data is distributed across multiple self-interested agents. These age...
Abstract. Typically, multi-agent systems are designed assuming perfectly rational, self-interested a...
We define a fairness solution criterion for multi-agent decision-making problems, where agents have ...
Many multi-agent systems are intended to operate together with or as a service to humans. Typically,...
This paper experimentally investigates cooperative game theory from a normative perspective. Subject...
Working paper du GATE n° 8-2001How do intrinsic motivations such as fairness and reciprocity influen...
We study a multiplayer extension of the well-known Ultimatum Game (UG) through the lens of a reinfor...
In many common tasks for multi-agent systems, assuming individually rational agents leads to inferio...
The number of AI agents in the world is increasing every day and they will need to interact with ea...
This thesis motivates and introduces a way to model fairness considerations in cooperative game theo...
This book mainly aims at solving the problems in both cooperative and competitive multi-agent system...
We use simulated soccer to study multiagent learning. Each team's players (agents) share action se...
Developing learning methods which do not discriminate subgroups in the population is the central goa...