This thesis presents novel work on how to improve exploration in reinforcement learning using domain knowledge and knowledge-based approaches to reinforcement learning. It also identifies novel relationships between the algorithms' and domains' parameters and the exploration efficiency. The goal of solving reinforcement learning problems is to learn how to execute actions in order to maximise the long term reward. Solving this type of problems is a hard task when real domains of realistic size are considered because the state space grows exponentially with each state feature added to the representation of the problem. In its basic form, reinforcement learning is tabula rasa, i.e. it starts learning with very limited knowledge about th...
Learning for exploration/exploitation in reinforcement learning We address in this thesis the origin...
In this master thesis, we have tried to solve two of most prominent Reinforcement Learning problems:...
State-of-the-art reinforcement learning (RL) algorithms generally require a large sample of interact...
This thesis presents novel work on how to improve exploration in reinforcement learning using domain...
Reinforcement learning has proven to be a successful artificial intelligence technique when an agent...
Applying conventional reinforcement to complex domains requires the use of an overly simplified task...
The field of Reinforcement Learning is concerned with teaching agents to take optimal decisions t...
How do you incentivize self-interested agents to $\textit{explore}$ when they prefer to $\textit{exp...
Over the course of the last decade, the framework of reinforcement learning has developed into a pro...
The purpose of this dissertation is to understand how algorithms can efficiently learn to solve new ...
Recent advancements in reinforcement learning confirm that reinforcement learning techniques can sol...
This paper discusses parameter-based exploration methods for reinforcement learning. Parameter-based...
Reinforcement Learning (RL) is the field of research focused on solving sequential decision-making t...
Reinforcement learning (RL) can be defined as a technique for learning in an unknown environment. Th...
Reinforcement Learning (RL) is a subset of machine learning primarily concerned with goal-directed l...
Learning for exploration/exploitation in reinforcement learning We address in this thesis the origin...
In this master thesis, we have tried to solve two of most prominent Reinforcement Learning problems:...
State-of-the-art reinforcement learning (RL) algorithms generally require a large sample of interact...
This thesis presents novel work on how to improve exploration in reinforcement learning using domain...
Reinforcement learning has proven to be a successful artificial intelligence technique when an agent...
Applying conventional reinforcement to complex domains requires the use of an overly simplified task...
The field of Reinforcement Learning is concerned with teaching agents to take optimal decisions t...
How do you incentivize self-interested agents to $\textit{explore}$ when they prefer to $\textit{exp...
Over the course of the last decade, the framework of reinforcement learning has developed into a pro...
The purpose of this dissertation is to understand how algorithms can efficiently learn to solve new ...
Recent advancements in reinforcement learning confirm that reinforcement learning techniques can sol...
This paper discusses parameter-based exploration methods for reinforcement learning. Parameter-based...
Reinforcement Learning (RL) is the field of research focused on solving sequential decision-making t...
Reinforcement learning (RL) can be defined as a technique for learning in an unknown environment. Th...
Reinforcement Learning (RL) is a subset of machine learning primarily concerned with goal-directed l...
Learning for exploration/exploitation in reinforcement learning We address in this thesis the origin...
In this master thesis, we have tried to solve two of most prominent Reinforcement Learning problems:...
State-of-the-art reinforcement learning (RL) algorithms generally require a large sample of interact...