Automatic data abstraction is an important capability for both benchmarking machine intelligence and supporting summarization applications. In the former one asks whether a machine can ‘understand’ enough about the meaning of input data to produce a meaningful but more compact abstraction. In the latter this capability is exploited for saving space or human time by summarizing the essence of input data. In this paper we study a general reinforcement learning based framework for learning to abstract sequential data in a goal-driven way. The ability to define different abstraction goals uniquely allows different aspects of the input data to be preserved according to the ultimate purpose of the abstraction. Our reinforcement learning objective...
In this paper, we present a novel approach to incrementally learn an Abstract Model of an unknown en...
International audienceBuilding autonomous machines that can explore open-ended environments, discove...
The application of reinforcement learning (RL) algorithms is often hindered by the combinatorial exp...
Automatic data abstraction is an important capability for both benchmarking machine intelligence and...
We characterise the problem of abstraction in the context of deep reinforcement learning. Various we...
Successful reinforcement learning requires large amounts of data, compute, and some luck. We explore...
Reinforcement learning presents a challenging problem: agents must generalize experiences, efficient...
Reinforcement learning (RL) models the learning process of humans, but as exciting advances are made...
Temporal abstraction for reinforcement learning (RL) aims to decrease learning time by making use of...
State abstractions are often used to reduce the complexity of model-based reinforcement learn-ing wh...
When reinforcement learning is applied with sparse rewards, agents must spend a prohibitively long t...
When applying the learning systems to real-world problems, which have a lot of unknown or uncertain ...
We are interested in the following general question: is it pos-\ud sible to abstract knowledge that ...
The field of artificial intelligence (AI) is devoted to the creation of artificial decision-makers t...
Language model (LM) pre-training is useful in many language processing tasks. But can pre-trained LM...
In this paper, we present a novel approach to incrementally learn an Abstract Model of an unknown en...
International audienceBuilding autonomous machines that can explore open-ended environments, discove...
The application of reinforcement learning (RL) algorithms is often hindered by the combinatorial exp...
Automatic data abstraction is an important capability for both benchmarking machine intelligence and...
We characterise the problem of abstraction in the context of deep reinforcement learning. Various we...
Successful reinforcement learning requires large amounts of data, compute, and some luck. We explore...
Reinforcement learning presents a challenging problem: agents must generalize experiences, efficient...
Reinforcement learning (RL) models the learning process of humans, but as exciting advances are made...
Temporal abstraction for reinforcement learning (RL) aims to decrease learning time by making use of...
State abstractions are often used to reduce the complexity of model-based reinforcement learn-ing wh...
When reinforcement learning is applied with sparse rewards, agents must spend a prohibitively long t...
When applying the learning systems to real-world problems, which have a lot of unknown or uncertain ...
We are interested in the following general question: is it pos-\ud sible to abstract knowledge that ...
The field of artificial intelligence (AI) is devoted to the creation of artificial decision-makers t...
Language model (LM) pre-training is useful in many language processing tasks. But can pre-trained LM...
In this paper, we present a novel approach to incrementally learn an Abstract Model of an unknown en...
International audienceBuilding autonomous machines that can explore open-ended environments, discove...
The application of reinforcement learning (RL) algorithms is often hindered by the combinatorial exp...