In an ad-hoc teamwork environment, artificial intelligence agents have the potential to take on supportive roles and complete tasks in collaboration with human players. The following paper investigates the use of employing population-based training (PBT) for reinforcement learning agents in the multi-player game Overcooked. In addition to this, the research examines whether the incorporation of highly mutated agents, which serve to introduce noise into the initial population, could enhance the final performance of PBT. As the method used to answer the previous inquiries, the learning curve of a selected PBT agent is first evaluated and its final performance with a human proxy then examined within different layouts of the game. Following thi...
Being able to accomplish tasks with multiple learners through learning has long been a goal of the m...
The aim of this thesis was to use create an intelligent agent using Reinforcement learning to play S...
[[abstract]]Reinforcement learning is an unsupervised machine learning method in the field of Artifi...
In ad-hoc cooperative environments, the usage of artificial intelligence to take supportive roles an...
A longstanding problem in the area of reinforcement learning is human-agent col- laboration. As past...
Most cooperative games are tackled by creating a team of agents who are optimised for each other and...
While we would like agents that can coordinate with humans, current algorithms such as self-play and...
Overcooked, an immersive multiplayer video game centered around cooperative cooking challenges, prov...
We study the problem of training a Reinforcement Learning (RL) agent that is collaborative with huma...
We study the problem of training a Reinforcement Learning (RL) agent that is collaborative with huma...
Artificial intelligence is frequently used to control virtual characters in movies and games. When t...
Iwoki math is an abstract board game that consists on placing tiles and that combines the calculatio...
1 The primary aim of this investigation is to develop a team of intelligent agents that can work tog...
Typically in reinforcement learning, agents are trained and evaluated on the same environment. Conse...
If a computer game company wants to stay competitive they must offer something extra. For many years...
Being able to accomplish tasks with multiple learners through learning has long been a goal of the m...
The aim of this thesis was to use create an intelligent agent using Reinforcement learning to play S...
[[abstract]]Reinforcement learning is an unsupervised machine learning method in the field of Artifi...
In ad-hoc cooperative environments, the usage of artificial intelligence to take supportive roles an...
A longstanding problem in the area of reinforcement learning is human-agent col- laboration. As past...
Most cooperative games are tackled by creating a team of agents who are optimised for each other and...
While we would like agents that can coordinate with humans, current algorithms such as self-play and...
Overcooked, an immersive multiplayer video game centered around cooperative cooking challenges, prov...
We study the problem of training a Reinforcement Learning (RL) agent that is collaborative with huma...
We study the problem of training a Reinforcement Learning (RL) agent that is collaborative with huma...
Artificial intelligence is frequently used to control virtual characters in movies and games. When t...
Iwoki math is an abstract board game that consists on placing tiles and that combines the calculatio...
1 The primary aim of this investigation is to develop a team of intelligent agents that can work tog...
Typically in reinforcement learning, agents are trained and evaluated on the same environment. Conse...
If a computer game company wants to stay competitive they must offer something extra. For many years...
Being able to accomplish tasks with multiple learners through learning has long been a goal of the m...
The aim of this thesis was to use create an intelligent agent using Reinforcement learning to play S...
[[abstract]]Reinforcement learning is an unsupervised machine learning method in the field of Artifi...