Real-Time Strategy (RTS) games can be abstracted to resource allocation applicable in many fields and industries. We consider a simplified custom RTS game focused on mid-level combat using reinforcement learning (RL) algorithms. There are a number of contributions to game playing with RL in this paper. First, we combine hierarchical RL with a multi-layer perceptron (MLP) that receives higher-order inputs for increased learning speed and performance. Second, we compare Q-learning against Monte Carlo learning as reinforcement learning algorithms. Third, because the teams in the RTS game are multi-agent systems, we examine two different methods for assigning rewards to agents. Experiments are performed against two different fixed opponents. Th...
This article focuses on the recent advances in the field of reinforcement learning (RL) as well as t...
This paper investigates the challenges posed by the application of reinforcement learning to large-s...
This study is conducted to understand the internal workings of reinforcement learning. In the movie ...
Real-Time Strategy (RTS) games can be abstracted to resource allocation applicable in many fields an...
AbstractIn this paper we proposed reinforcement learning algorithms with the generalized reward func...
Udgivelsesdato: October 2009Real-time strategy (RTS) games provide a challenging platform to impleme...
We consider the problem of effective and automated decision-making in modern real-time strategy (RTS...
Real-Time Strategy(RTS) games provide a challenging platform to implement online reinforcement learn...
This work focuses on methods of machine learning for playing real-time strategy games. The thesis ap...
Reinforcement learning is a machine learning technique that makes a decision based on a sequence of...
National audienceThis paper investigates the design of a challenging Game AI for a modern strategy g...
This paper describes a novel hierarchical reinforcement learning (HRL) algorithm for training an aut...
Real-time Strategy (RTS) games provide a challenging environment for AI research, due to their larg...
Deep reinforcement learning (RL) methods have made significant advancements over recent years toward...
Machine learning is spearheading progress for the field of artificial intelligence in terms of provi...
This article focuses on the recent advances in the field of reinforcement learning (RL) as well as t...
This paper investigates the challenges posed by the application of reinforcement learning to large-s...
This study is conducted to understand the internal workings of reinforcement learning. In the movie ...
Real-Time Strategy (RTS) games can be abstracted to resource allocation applicable in many fields an...
AbstractIn this paper we proposed reinforcement learning algorithms with the generalized reward func...
Udgivelsesdato: October 2009Real-time strategy (RTS) games provide a challenging platform to impleme...
We consider the problem of effective and automated decision-making in modern real-time strategy (RTS...
Real-Time Strategy(RTS) games provide a challenging platform to implement online reinforcement learn...
This work focuses on methods of machine learning for playing real-time strategy games. The thesis ap...
Reinforcement learning is a machine learning technique that makes a decision based on a sequence of...
National audienceThis paper investigates the design of a challenging Game AI for a modern strategy g...
This paper describes a novel hierarchical reinforcement learning (HRL) algorithm for training an aut...
Real-time Strategy (RTS) games provide a challenging environment for AI research, due to their larg...
Deep reinforcement learning (RL) methods have made significant advancements over recent years toward...
Machine learning is spearheading progress for the field of artificial intelligence in terms of provi...
This article focuses on the recent advances in the field of reinforcement learning (RL) as well as t...
This paper investigates the challenges posed by the application of reinforcement learning to large-s...
This study is conducted to understand the internal workings of reinforcement learning. In the movie ...