Computing Nash equilibrium policies is a central problem in multi-agent reinforcement learning that has received extensive attention both in theory and in practice. However, provable guarantees have been thus far either limited to fully competitive or cooperative scenarios or impose strong assumptions that are difficult to meet in most practical applications. In this work, we depart from those prior results by investigating infinite-horizon \emph{adversarial team Markov games}, a natural and well-motivated class of games in which a team of identically-interested players -- in the absence of any explicit coordination or communication -- is competing against an adversarial player. This setting allows for a unifying treatment of zero-sum Marko...
In this paper we present an algorithm to compute all nash equilibria for generic finite n-person gam...
Game theory's prescriptive power typically relies on full rationality and/or self-play interactions....
Several multiagent reinforcement learning (MARL) algorithms have been proposed to optimize agents ’ ...
In game theory, Nash equilibria, the states where no players can gain by unilaterally changing their...
An ideal strategy in zero-sum games should not only grant the player an average reward no less than ...
In this thesis, we explore the use of policy approximation for reducing the computational cost of le...
AbstractA widely accepted rational behavior for non-cooperative players is based on the notion of Na...
Algorithmic game theory studies computational and algorithmic questions arising from the behavior of...
Robust decision-making in multiplayer games requires anticipating what reactions a player policy may...
Algorithmic game theory attempts to mathematically capture behavior in strategic situations, in whic...
Stochastic games generalize Markov decision processes (MDPs) to a multiagent setting by allowing the...
Coevolutionary algorithms are plagued with a set of problems re-lated to intransitivity that make it...
The Team-maxmin equilibrium prescribes the optimal strategies for a team of rational players sharing...
This paper proposes novel, end-to-end deep reinforcement learning algorithms for learning two-player...
In this paper we present a novel method for finding the strong Nash equilibrium. The approach consis...
In this paper we present an algorithm to compute all nash equilibria for generic finite n-person gam...
Game theory's prescriptive power typically relies on full rationality and/or self-play interactions....
Several multiagent reinforcement learning (MARL) algorithms have been proposed to optimize agents ’ ...
In game theory, Nash equilibria, the states where no players can gain by unilaterally changing their...
An ideal strategy in zero-sum games should not only grant the player an average reward no less than ...
In this thesis, we explore the use of policy approximation for reducing the computational cost of le...
AbstractA widely accepted rational behavior for non-cooperative players is based on the notion of Na...
Algorithmic game theory studies computational and algorithmic questions arising from the behavior of...
Robust decision-making in multiplayer games requires anticipating what reactions a player policy may...
Algorithmic game theory attempts to mathematically capture behavior in strategic situations, in whic...
Stochastic games generalize Markov decision processes (MDPs) to a multiagent setting by allowing the...
Coevolutionary algorithms are plagued with a set of problems re-lated to intransitivity that make it...
The Team-maxmin equilibrium prescribes the optimal strategies for a team of rational players sharing...
This paper proposes novel, end-to-end deep reinforcement learning algorithms for learning two-player...
In this paper we present a novel method for finding the strong Nash equilibrium. The approach consis...
In this paper we present an algorithm to compute all nash equilibria for generic finite n-person gam...
Game theory's prescriptive power typically relies on full rationality and/or self-play interactions....
Several multiagent reinforcement learning (MARL) algorithms have been proposed to optimize agents ’ ...