Multi-agent coordination problems can be cast as distributed optimization tasks. Probability collectives (PCs) are techniques that deal with such problems in discrete and continuous spaces. In this paper we are going to propose a new variation of PCs, sequentially updated probability collectives. Our objective is to show how standard techniques from the statistics literature, sequential Monte Carlo methods and kernel regression, can be used as building blocks within PCs instead of the ad hoc approaches taken previously to produce samples and estimate values in continuous action spaces. We test our algorithm in three different simulation scenarios with continuous action spaces. Two classical distributed optimization functions, the three and ...
There are numerous applications of multi-agent systems like disaster management [1], sensor networks...
In this paper, we consider optimization problems involving multiple agents. Each agent introduces it...
We present a unified approach to multi-agent autonomous coordination in complex and uncertain enviro...
The complex systems can be best dealt by decomposing them into subsystems or Multi-Agent System (MAS...
This book provides an emerging computational intelligence tool in the framework of collective intell...
International audienceIn this paper, a multi-agent probabilistic optimization algorithm is applied t...
Complex systems generally have many components and it is difficult to understand the whole system on...
Multiagent sequential decision making has seen rapid progress with formal models such as decentrali...
Abstract. We describe and evaluate a multi-objective optimisation (MOO) algorithm that works within ...
The 'Collective Intelligence' (COIN) framework concerns the design of collectives of reinforcement-l...
Bayesian games can be used to model single-shot decision problems in which agents only possess incom...
A multi-agent system is defined as a collection of autonomous agents which are able to interact with...
In this paper we address the problem of coordination in multi-agent sequential decision problems wit...
In this paper, the novel Distributed Bayesian (D-Bay) algorithm is presented for solving multi-agent...
In extensive form noncooperative game theory, at each instant t, each agent i sets its state x, inde...
There are numerous applications of multi-agent systems like disaster management [1], sensor networks...
In this paper, we consider optimization problems involving multiple agents. Each agent introduces it...
We present a unified approach to multi-agent autonomous coordination in complex and uncertain enviro...
The complex systems can be best dealt by decomposing them into subsystems or Multi-Agent System (MAS...
This book provides an emerging computational intelligence tool in the framework of collective intell...
International audienceIn this paper, a multi-agent probabilistic optimization algorithm is applied t...
Complex systems generally have many components and it is difficult to understand the whole system on...
Multiagent sequential decision making has seen rapid progress with formal models such as decentrali...
Abstract. We describe and evaluate a multi-objective optimisation (MOO) algorithm that works within ...
The 'Collective Intelligence' (COIN) framework concerns the design of collectives of reinforcement-l...
Bayesian games can be used to model single-shot decision problems in which agents only possess incom...
A multi-agent system is defined as a collection of autonomous agents which are able to interact with...
In this paper we address the problem of coordination in multi-agent sequential decision problems wit...
In this paper, the novel Distributed Bayesian (D-Bay) algorithm is presented for solving multi-agent...
In extensive form noncooperative game theory, at each instant t, each agent i sets its state x, inde...
There are numerous applications of multi-agent systems like disaster management [1], sensor networks...
In this paper, we consider optimization problems involving multiple agents. Each agent introduces it...
We present a unified approach to multi-agent autonomous coordination in complex and uncertain enviro...