Deep Reinforcement Learning has shown significant progress in extracting...
We study the problem of planning under model uncertainty in an online
me...
Decision-making AI agents are often faced with two important challenges:...
Humans and animals have the ability to reason and make predictions about...
The field of Continual Learning (CL) seeks to develop algorithms that
ac...
In this article, we aim to provide a literature review of different
form...
Multi-task reinforcement learning is a rich paradigm where information f...
Reinforcement learning algorithms usually assume that all actions are al...
Temporal abstraction refers to the ability of an agent to use behaviours...
To achieve general artificial intelligence, reinforcement learning (RL)
...
When humans perform a task, such as playing a game, they selectively pay...
Designing hierarchical reinforcement learning algorithms that induce a n...