Intelligent optimisation refers to the promising technique of integrating learning mechanisms into (meta-)heuristic search. In this paper we use multi-agent reinforcement learning for building high quality solutions for the multi-mode resource-constrained project scheduling problem. We use a network of distributed reinforcement learning agents that cooperate to jointly learn a well performing constructive heuristic. Each agent, being responsible for one activity, uses two simple learning devices, called learning automata, that learn to select a successor activity order and a mode, respectively. By coupling the reward signals for both learning tasks, we can clearly show the advantage of using reinforcement learning in search. We present some...
The paper presents an adaptive iterative distributed scheduling algorithm that operates dynamically ...
Recently, reinforcement learning has been proposed as an effective method for knowledge acquisition ...
In this paper the dynamic interaction strategy based on the Population Learning Algorithm (PLA) for ...
Intelligent optimisation refers to the promising technique of integrating learning mechanisms into (...
This paper introduces a novel approach for solving the multi-mode resource-constrained project sched...
The present thesis describes the use of reinforcement learning to enhance heuristic search for solvi...
This article presents a multi-agent framework for optimization using metaheuristics, called AMAM. In...
This abstract introduces a novel approach to intelligently select appropriate modes for each activit...
Decentralized decision-making is an active research topic in artificial intelligence. In a distribut...
The paper presents an adaptive iterative distributed scheduling algorithm that operates in a market-...
Scheduling plays an important role in automated production. Its impact can be found in various field...
In this dissertation we address large, multiple-mode, resource-constrained project scheduling proble...
Multi-machine scheduling, that is, the assigment of jobs to machines such that certain performance d...
Reinforcement learning techniques have been successfully used to solve single agent optimization pro...
Artificial intelligence algorithms enable autonomous agents to perform sophisticated tasks with grea...
The paper presents an adaptive iterative distributed scheduling algorithm that operates dynamically ...
Recently, reinforcement learning has been proposed as an effective method for knowledge acquisition ...
In this paper the dynamic interaction strategy based on the Population Learning Algorithm (PLA) for ...
Intelligent optimisation refers to the promising technique of integrating learning mechanisms into (...
This paper introduces a novel approach for solving the multi-mode resource-constrained project sched...
The present thesis describes the use of reinforcement learning to enhance heuristic search for solvi...
This article presents a multi-agent framework for optimization using metaheuristics, called AMAM. In...
This abstract introduces a novel approach to intelligently select appropriate modes for each activit...
Decentralized decision-making is an active research topic in artificial intelligence. In a distribut...
The paper presents an adaptive iterative distributed scheduling algorithm that operates in a market-...
Scheduling plays an important role in automated production. Its impact can be found in various field...
In this dissertation we address large, multiple-mode, resource-constrained project scheduling proble...
Multi-machine scheduling, that is, the assigment of jobs to machines such that certain performance d...
Reinforcement learning techniques have been successfully used to solve single agent optimization pro...
Artificial intelligence algorithms enable autonomous agents to perform sophisticated tasks with grea...
The paper presents an adaptive iterative distributed scheduling algorithm that operates dynamically ...
Recently, reinforcement learning has been proposed as an effective method for knowledge acquisition ...
In this paper the dynamic interaction strategy based on the Population Learning Algorithm (PLA) for ...