The recent mean field game (MFG) formalism facilitates otherwise intractable computation of approximate Nash equilibria in many-agent settings. In this paper, we consider discrete-time finite MFGs subject to finite-horizon objectives. We show that all discrete-time finite MFGs with non-constant fixed point operators fail to be contractive as typically assumed in existing MFG literature, barring convergence via fixed point iteration. Instead, we incorporate entropy-regularization and Boltzmann policies into the fixed point iteration. As a result, we obtain provable convergence to approximate fixed points where existing methods fail, and reach the original goal of approximate Nash equilibria. All proposed methods are evaluated with respect to...
In this paper, we deepen the analysis of continuous time Fictitious Play learning algorithm to the c...
Mean Field Games (MFGs) can potentially scale multi-agent systems to extremely large populations of ...
In this paper, we deepen the analysis of continuous time Fictitious Play learning algorithm to the c...
The recent mean field game (MFG) formalism facilitates otherwise intractable computation of approxim...
The recent mean field game (MFG) formalism facilitates otherwise intractable computation of approxim...
The recent mean field game (MFG) formalism facilitates otherwise intractable computation of approxim...
The recent mean field game (MFG) formalism facilitates otherwise intractable computation of approxim...
The recent mean field game (MFG) formalism facilitates otherwise intractable computation of approxim...
Mean-field games (MFG) were introduced to efficiently analyze approximate Nash equilibria in large p...
We consider learning approximate Nash equilibria for discrete-time mean-field games with nonlinear s...
Recent advances at the intersection of dense large graph limits and mean field games have begun to e...
Learning by experience in Multi-Agent Systems (MAS) is a difficult and exciting task, due to the lac...
In this manuscript, we develop reinforcement learning theory and algorithms for differential games w...
In this manuscript, we develop reinforcement learning theory and algorithms for differential games w...
A major challenge in multi-agent systems is that the system complexity grows dramatically with the n...
In this paper, we deepen the analysis of continuous time Fictitious Play learning algorithm to the c...
Mean Field Games (MFGs) can potentially scale multi-agent systems to extremely large populations of ...
In this paper, we deepen the analysis of continuous time Fictitious Play learning algorithm to the c...
The recent mean field game (MFG) formalism facilitates otherwise intractable computation of approxim...
The recent mean field game (MFG) formalism facilitates otherwise intractable computation of approxim...
The recent mean field game (MFG) formalism facilitates otherwise intractable computation of approxim...
The recent mean field game (MFG) formalism facilitates otherwise intractable computation of approxim...
The recent mean field game (MFG) formalism facilitates otherwise intractable computation of approxim...
Mean-field games (MFG) were introduced to efficiently analyze approximate Nash equilibria in large p...
We consider learning approximate Nash equilibria for discrete-time mean-field games with nonlinear s...
Recent advances at the intersection of dense large graph limits and mean field games have begun to e...
Learning by experience in Multi-Agent Systems (MAS) is a difficult and exciting task, due to the lac...
In this manuscript, we develop reinforcement learning theory and algorithms for differential games w...
In this manuscript, we develop reinforcement learning theory and algorithms for differential games w...
A major challenge in multi-agent systems is that the system complexity grows dramatically with the n...
In this paper, we deepen the analysis of continuous time Fictitious Play learning algorithm to the c...
Mean Field Games (MFGs) can potentially scale multi-agent systems to extremely large populations of ...
In this paper, we deepen the analysis of continuous time Fictitious Play learning algorithm to the c...