How to efficiently explore in reinforcement learning is an open problem....
To generalize across tasks, an agent should acquire knowledge from past ...
The task of building general agents that perform well over a wide range ...
Efficient credit assignment is essential for reinforcement learning
algo...
To accumulate knowledge and improve its policy of behaviour, a reinforce...
Learned models of the environment provide reinforcement learning (RL) ag...
Strategic diversity is often essential in games: in multi-player games, ...
Meta-learning empowers artificial intelligence to increase its efficienc...
Off-policy sampling and experience replay are key for improving sample
e...
Off-policy learning allows us to learn about possible policies of behavi...
Supporting state-of-the-art AI research requires balancing rapid prototy...
We propose a novel policy update that combines regularized policy
optimi...
Since the earliest days of reinforcement learning, the workhorse method ...
Temporal abstractions in the form of options have been shown to help
rei...
We address the problem of credit assignment in reinforcement learning an...
Reinforcement learning (RL) algorithms update an agent's parameters acco...
Deep reinforcement learning includes a broad family of algorithms that
p...
Reinforcement learning agents can include different components, such as
...
We consider the problem of efficient credit assignment in reinforcement
...
The principal contribution of this paper is a conceptual framework for
o...
Arguably, intelligent agents ought to be able to discover their own ques...
This paper introduces the Behaviour Suite for Reinforcement Learning, or...
We consider a general class of non-linear Bellman equations. These open ...
Many deep reinforcement learning algorithms contain inductive biases tha...
We examine the question of when and how parametric models are most usefu...
In this report we review memory-based meta-learning as a tool for buildi...
The ability of a reinforcement learning (RL) agent to learn about many r...
We know from reinforcement learning theory that temporal difference lear...
We want to make progress toward artificial general intelligence, namely
...
The reinforcement learning community has made great strides in designing...
Despite significant advances in the field of deep Reinforcement Learning...
The goal of reinforcement learning algorithms is to estimate and/or opti...
We propose a distributed architecture for deep reinforcement learning at...
Some real-world domains are best characterized as a single task, but for...
The deep reinforcement learning community has made several independent
i...
This paper introduces SC2LE (StarCraft II Learning Environment), a
reinf...
One of the key challenges of artificial intelligence is to learn models ...
Most learning algorithms are not invariant to the scale of the function ...
Being able to reason in an environment with a large number of discrete
a...
We investigate the accuracy of the two most common estimators for the ma...