It has been a long-standing goal in Artificial Intelligence (AI) to build machines that can solve tasks that humans can. Thanks to the recent rapid progress in data-driven methods, which train agents to solve tasks by learning from massive training data, there have been many successes in applying such learning approaches to handle and even solve a number of extremely challenging tasks, including image classification, language generation, robotics control, and several multi-player games. The key factor for all these data-driven successes is that the trained agents can generalize to test scenarios that are unseen during training. This generalization capability is the foundation for building any practical AI system. This thesis studies general...
The development of intelligent agents has seen significant progress in the lastdecade, showing impre...
Humans learn compositional and causal abstraction, i.e., knowledge, in response to the structure of ...
Imitation learning is an effective approach for training game-playing agents and, consequently, for ...
It has been a long-standing goal in Artificial Intelligence (AI) to build machines that can solve ta...
The choice of state and action representation in Reinforcement Learning (RL) has a significant effec...
Generalization, i.e., the ability to adapt to novel scenarios, is the hallmark of human intelligence...
Machine Learning (ML) is about computational methods that enable machines to learn concepts from exp...
Intelligent agents are becoming increasingly important in our society. We currently have house clean...
The ability to generalize is an important feature of any intelligent agent. Not only because it may ...
Reinforcement learning has long been advertised as the one with the capability to intelligently mimi...
In this thesis we aim to improve generalisation in deep reinforcement learning. Generalisation is a ...
In this work, we address generalization in targetdriven visual navigation by proposing a novel archi...
In this paper we present a new methodology for robot learning that combines ideas from statistical g...
In recent years, the advances in robotics have allowed for robots to venture into places too dangero...
Deep reinforcement learning provides a promising approach for text-based games in studying natural l...
The development of intelligent agents has seen significant progress in the lastdecade, showing impre...
Humans learn compositional and causal abstraction, i.e., knowledge, in response to the structure of ...
Imitation learning is an effective approach for training game-playing agents and, consequently, for ...
It has been a long-standing goal in Artificial Intelligence (AI) to build machines that can solve ta...
The choice of state and action representation in Reinforcement Learning (RL) has a significant effec...
Generalization, i.e., the ability to adapt to novel scenarios, is the hallmark of human intelligence...
Machine Learning (ML) is about computational methods that enable machines to learn concepts from exp...
Intelligent agents are becoming increasingly important in our society. We currently have house clean...
The ability to generalize is an important feature of any intelligent agent. Not only because it may ...
Reinforcement learning has long been advertised as the one with the capability to intelligently mimi...
In this thesis we aim to improve generalisation in deep reinforcement learning. Generalisation is a ...
In this work, we address generalization in targetdriven visual navigation by proposing a novel archi...
In this paper we present a new methodology for robot learning that combines ideas from statistical g...
In recent years, the advances in robotics have allowed for robots to venture into places too dangero...
Deep reinforcement learning provides a promising approach for text-based games in studying natural l...
The development of intelligent agents has seen significant progress in the lastdecade, showing impre...
Humans learn compositional and causal abstraction, i.e., knowledge, in response to the structure of ...
Imitation learning is an effective approach for training game-playing agents and, consequently, for ...