Coordinating multiple interacting agents to achieve a common goal is a difficult task with huge applicability. This problem remains hard to solve, even when limiting interactions to be mediated via a static interaction-graph. We present a novel approximate solution method for multi-agent Markov decision problems on graphs, based on variational perturbation theory. We adopt the strategy of planning via inference, which has been explored in various prior works. We employ a non-trivial extension of a novel high-order variational method that allows for approximate inference in large networks and has been shown to surpass the accuracy of existing variational methods. To compare our method to two state-of-the-art methods for multi-agent planning ...
This article presents the state-of-the-art in optimal solution methods for decentralized partially o...
Decentralized POMDPs provide an expressive framework for multiagent sequential decision making. Howe...
Information-theoretic principles for learning and acting have been proposed to solve particular clas...
Coordinating multiple interacting agents to achieve a common goal is a difficult task with huge appl...
Markov Decision Processes (MDPs) are extremely useful for modeling and solv-ing sequential decision ...
In this dissertation novel techniques for inference and learning of and decision-making in probabili...
Decentralized partially observable Markov decision processes (Dec-POMDPs) constitute an expressive f...
In this paper we propose interaction-driven Markov games (IDMGs), a new model for multiagent decisio...
In this paper we propose interaction-driven Markov games (IDMGs), a new model for multiagent decisio...
While formal, decision-theoretic models such as the Markov Decision Process (MDP) have greatly advan...
Multiagent sequential decision making has seen rapid progress with formal models such as decentrali...
In domains such as electric vehicle charging, smart distribution grids and autonomous warehouses, mu...
In domains such as electric vehicle charging, smart distribution grids and autonomous warehouses, mu...
In this paper we focus on distributed multiagent planning under uncertainty. For single-agent planni...
Missions for teams of autonomous systems often require agents to visit multiple targets in complex a...
This article presents the state-of-the-art in optimal solution methods for decentralized partially o...
Decentralized POMDPs provide an expressive framework for multiagent sequential decision making. Howe...
Information-theoretic principles for learning and acting have been proposed to solve particular clas...
Coordinating multiple interacting agents to achieve a common goal is a difficult task with huge appl...
Markov Decision Processes (MDPs) are extremely useful for modeling and solv-ing sequential decision ...
In this dissertation novel techniques for inference and learning of and decision-making in probabili...
Decentralized partially observable Markov decision processes (Dec-POMDPs) constitute an expressive f...
In this paper we propose interaction-driven Markov games (IDMGs), a new model for multiagent decisio...
In this paper we propose interaction-driven Markov games (IDMGs), a new model for multiagent decisio...
While formal, decision-theoretic models such as the Markov Decision Process (MDP) have greatly advan...
Multiagent sequential decision making has seen rapid progress with formal models such as decentrali...
In domains such as electric vehicle charging, smart distribution grids and autonomous warehouses, mu...
In domains such as electric vehicle charging, smart distribution grids and autonomous warehouses, mu...
In this paper we focus on distributed multiagent planning under uncertainty. For single-agent planni...
Missions for teams of autonomous systems often require agents to visit multiple targets in complex a...
This article presents the state-of-the-art in optimal solution methods for decentralized partially o...
Decentralized POMDPs provide an expressive framework for multiagent sequential decision making. Howe...
Information-theoretic principles for learning and acting have been proposed to solve particular clas...