An individual’s learning rule is completely uncoupled if it does not depend directly on the actions or payoffs of anyone else. We propose a variant of log linear learning that is completely uncoupled and that selects an efficient (welfare-maximizing) pure Nash equilibrium in all generic n-person games that possess at least one pure Nash equilibrium. In games that do not have such an equilibrium, there is a simple formula that expresses the long-run probability of the various disequilibrium states in terms of two factors: i) the sum of payoffs over all agents, and ii) the maximum payoff gain that results from a unilateral deviation by some agent. This welfare/stability trade-off criterion provides a novel framework for analyzing the selectio...
We consider multi-agent decision making, where each agent optimizes its cost function subject to con...
This paper studies adaptive learning in the class of weighted network games. This class of games inc...
A multi-person discrete game where the payoff after each play is stochastic is considered. The distr...
An individual's learning rule is completely uncoupled if it does not depend on the actions or payoff...
A learning rule is completely uncoupled if each player’s behavior is conditioned only on his own rea...
We consider multi-agent decision making where each agent's cost function depends on all agents' stra...
This paper considers a multi-person discrete game with random payoffs. The distribution of the rando...
We propose a simple payoff-based learning rule that is completely decentralized, and that leads to a...
We propose a simple payoff-based learning rule that is completely decentralized, and that leads to a...
We propose a simple payoff-based learning rule that is completely decentralized, and that leads to a...
We consider multi-agent decision making, where each agent optimizes its cost function subject to con...
This paper studies the learning process carried out by two agents who are involved in many games. As...
A multi-person discrete game where the payoff after each play is stochastic is considered. The distr...
AbstractWe introduce efficient learning equilibrium (ELE), a normative approach to learning in non-c...
A learning rule is uncoupled if a player does not condition his strategy on the opponent’s payoffs. ...
We consider multi-agent decision making, where each agent optimizes its cost function subject to con...
This paper studies adaptive learning in the class of weighted network games. This class of games inc...
A multi-person discrete game where the payoff after each play is stochastic is considered. The distr...
An individual's learning rule is completely uncoupled if it does not depend on the actions or payoff...
A learning rule is completely uncoupled if each player’s behavior is conditioned only on his own rea...
We consider multi-agent decision making where each agent's cost function depends on all agents' stra...
This paper considers a multi-person discrete game with random payoffs. The distribution of the rando...
We propose a simple payoff-based learning rule that is completely decentralized, and that leads to a...
We propose a simple payoff-based learning rule that is completely decentralized, and that leads to a...
We propose a simple payoff-based learning rule that is completely decentralized, and that leads to a...
We consider multi-agent decision making, where each agent optimizes its cost function subject to con...
This paper studies the learning process carried out by two agents who are involved in many games. As...
A multi-person discrete game where the payoff after each play is stochastic is considered. The distr...
AbstractWe introduce efficient learning equilibrium (ELE), a normative approach to learning in non-c...
A learning rule is uncoupled if a player does not condition his strategy on the opponent’s payoffs. ...
We consider multi-agent decision making, where each agent optimizes its cost function subject to con...
This paper studies adaptive learning in the class of weighted network games. This class of games inc...
A multi-person discrete game where the payoff after each play is stochastic is considered. The distr...