A long-standing challenge in reinforcement learning is the design of function approximations and efficient learning algorithms that provide agents with fast training, robust learning, and high performance in complex environments. To this end, the use of prior knowledge, while promising, is often costly and, in essence, challenging to scale up. In contrast, we consider problem knowledge signals, that are any relevant indicator useful to solve a task, e.g., metrics of uncertainty or proactive prediction of future states. Our framework consists of predicting such complementary quantities associated with self-performance assessment and accurate expectations. Therefore, policy and value functions are no longer only optimized for a reward but are...
Reinforcement learning has long been advertised as the one with the capability to intelligently mimi...
Reinforcement Learning (RL) has seen exponential performance improvements over the past decade, achi...
In this thesis we aim to improve generalisation in deep reinforcement learning. Generalisation is a ...
International audienceA common challenge in reinforcement learning is how to convert the agent's int...
A reinforcement-learning agent learns by trying actions and observing resulting reward in each state...
The field of Reinforcement Learning is concerned with teaching agents to take optimal decisions t...
Reinforcement learning (RL) has been widely used, for example, in robotics, recommendation systems, ...
Reinforcement learning (RL) has been widely used, for example, in robotics, recommendation systems, ...
Reinforcement learning (RL) has seen widespread success in creating intelligent agents in several ch...
This thesis focuses on Reinforcement Learning (RL) which considers an agent that makes sequen- tial ...
When applying reinforcement learning to real world problems it is desir-able to make use of any prio...
Reinforcement Learning (RL) algorithms allow artificial agents to improve their action selection pol...
When applying reinforcement learning in domains with very large or continuous state spaces, the expe...
Reinforcement learning is a powerful approach for learning control policies that solve sequential de...
Reinforcement learning (RL) focuses on an essential aspect of intelligent behavior – how an agent ca...
Reinforcement learning has long been advertised as the one with the capability to intelligently mimi...
Reinforcement Learning (RL) has seen exponential performance improvements over the past decade, achi...
In this thesis we aim to improve generalisation in deep reinforcement learning. Generalisation is a ...
International audienceA common challenge in reinforcement learning is how to convert the agent's int...
A reinforcement-learning agent learns by trying actions and observing resulting reward in each state...
The field of Reinforcement Learning is concerned with teaching agents to take optimal decisions t...
Reinforcement learning (RL) has been widely used, for example, in robotics, recommendation systems, ...
Reinforcement learning (RL) has been widely used, for example, in robotics, recommendation systems, ...
Reinforcement learning (RL) has seen widespread success in creating intelligent agents in several ch...
This thesis focuses on Reinforcement Learning (RL) which considers an agent that makes sequen- tial ...
When applying reinforcement learning to real world problems it is desir-able to make use of any prio...
Reinforcement Learning (RL) algorithms allow artificial agents to improve their action selection pol...
When applying reinforcement learning in domains with very large or continuous state spaces, the expe...
Reinforcement learning is a powerful approach for learning control policies that solve sequential de...
Reinforcement learning (RL) focuses on an essential aspect of intelligent behavior – how an agent ca...
Reinforcement learning has long been advertised as the one with the capability to intelligently mimi...
Reinforcement Learning (RL) has seen exponential performance improvements over the past decade, achi...
In this thesis we aim to improve generalisation in deep reinforcement learning. Generalisation is a ...