This paper introduces a new class of multi-agent discrete-time dynamic games, known in the literature as dynamic graphical games. For that reason a local performance index is defined for each agent that depends only on the local information available to each agent. Nash equilibrium policies and best-response policies are given in terms of the solutions to the discrete-time coupled Hamilton–Jacobi equations. Since in these games the interactions between the agents are prescribed by a communication graph structure we have to introduce a new notion of Nash equilibrium. It is proved that this notion holds if all agents are in Nash equilibrium and the graph is strongly connected. A novel reinforcement learning value iteration algorithm is given ...
This paper addresses a class of network games played by dynamic agents using their outputs. Unlike m...
Although multi-agent reinforcement learning can tackle systems of strategically interacting entities...
In this paper we compare state-of-the-art multi-agent reinforcement learning algorithms in a wide va...
This paper introduces a new class of multi-agent discrete-time dynamic games, known in the literatur...
This paper introduces a new class of multi-agent discrete-time dynamical games known as dynamic grap...
This paper develops an off-policy reinforcement learning (RL) algorithm to solve optimal synchroniza...
The central goal in multi-agent systems is to engineer a decision making architecture where agents m...
This paper develops a new online learning consensus control scheme for multiagent discrete-time syst...
This paper addresses a class of network games played by dynamic agents using their outputs. Unlike m...
In this paper, continuous-time noncooperative games in networks of double-integrator agents are expl...
Distributed tracking control of multi-agent linear systems in the presence of disturbances is consid...
This dissertation studies multi-agent algorithms for learning Nash equilibrium strategies in games w...
Recent advances at the intersection of dense large graph limits and mean field games have begun to e...
Several multiagent reinforcement learning (MARL) algorithms have been proposed to optimize agents ’ ...
The paper concerns the development of distributed equilibria learning strategies in large-scale mult...
This paper addresses a class of network games played by dynamic agents using their outputs. Unlike m...
Although multi-agent reinforcement learning can tackle systems of strategically interacting entities...
In this paper we compare state-of-the-art multi-agent reinforcement learning algorithms in a wide va...
This paper introduces a new class of multi-agent discrete-time dynamic games, known in the literatur...
This paper introduces a new class of multi-agent discrete-time dynamical games known as dynamic grap...
This paper develops an off-policy reinforcement learning (RL) algorithm to solve optimal synchroniza...
The central goal in multi-agent systems is to engineer a decision making architecture where agents m...
This paper develops a new online learning consensus control scheme for multiagent discrete-time syst...
This paper addresses a class of network games played by dynamic agents using their outputs. Unlike m...
In this paper, continuous-time noncooperative games in networks of double-integrator agents are expl...
Distributed tracking control of multi-agent linear systems in the presence of disturbances is consid...
This dissertation studies multi-agent algorithms for learning Nash equilibrium strategies in games w...
Recent advances at the intersection of dense large graph limits and mean field games have begun to e...
Several multiagent reinforcement learning (MARL) algorithms have been proposed to optimize agents ’ ...
The paper concerns the development of distributed equilibria learning strategies in large-scale mult...
This paper addresses a class of network games played by dynamic agents using their outputs. Unlike m...
Although multi-agent reinforcement learning can tackle systems of strategically interacting entities...
In this paper we compare state-of-the-art multi-agent reinforcement learning algorithms in a wide va...