The ability to combine learned knowledge and skills to solve novel tasks is a key aspect of generalization in humans that allows us to understand and perform tasks described by novel language utterances. While progress has been made in supervised learning settings, no work has yet studied compositional generalization of a reinforcement learning agent following natural language instructions in an embodied environment. We develop a set of tasks in a photo-realistic simulated kitchen environment that allow us to study the degree to which a behavioral policy captures the systematicity in language by studying its zero-shot generalization performance on held out natural language instructions. We show that our agent which leverages a novel additiv...
People can easily evoke previously encountered concepts, compose them, and apply the result to novel...
Abstract—Populations of simulated agents controlled by dy-namical neural networks are trained by art...
Text-based games can be used to develop task-oriented text agents for accomplishing tasks with high-...
Humans routinely face novel environments in which they have to generalize in order to act adaptively...
The choice of state and action representation in Reinforcement Learning (RL) has a significant effec...
The human ability to understand the world in terms of reusable ``building blocks\u27\u27 allows us t...
Populations of simulated agents controlled by dynamical neural networks are trained by artificial ev...
Robotic agents performing domestic chores by natural language directives are required to master the ...
Abstract—Populations of simulated agents controlled by dy-namical neural networks are trained by art...
Funding Information: We thank Yonatan Bisk for his valuable feedback and suggestions on this work. W...
To what extent do human reward learning and decision-making rely on the ability to represent and gen...
Population of simulated agents controlled by dynamical neural networks are trained by artificial evo...
To understand environments effectively and to interact safely with humans, robots must generalize th...
People think and learn abstractly and compositionally. These two key properties of human cognition a...
Researchers have been seeking intelligent robotic systems that can accomplish complex tasks autonomo...
People can easily evoke previously encountered concepts, compose them, and apply the result to novel...
Abstract—Populations of simulated agents controlled by dy-namical neural networks are trained by art...
Text-based games can be used to develop task-oriented text agents for accomplishing tasks with high-...
Humans routinely face novel environments in which they have to generalize in order to act adaptively...
The choice of state and action representation in Reinforcement Learning (RL) has a significant effec...
The human ability to understand the world in terms of reusable ``building blocks\u27\u27 allows us t...
Populations of simulated agents controlled by dynamical neural networks are trained by artificial ev...
Robotic agents performing domestic chores by natural language directives are required to master the ...
Abstract—Populations of simulated agents controlled by dy-namical neural networks are trained by art...
Funding Information: We thank Yonatan Bisk for his valuable feedback and suggestions on this work. W...
To what extent do human reward learning and decision-making rely on the ability to represent and gen...
Population of simulated agents controlled by dynamical neural networks are trained by artificial evo...
To understand environments effectively and to interact safely with humans, robots must generalize th...
People think and learn abstractly and compositionally. These two key properties of human cognition a...
Researchers have been seeking intelligent robotic systems that can accomplish complex tasks autonomo...
People can easily evoke previously encountered concepts, compose them, and apply the result to novel...
Abstract—Populations of simulated agents controlled by dy-namical neural networks are trained by art...
Text-based games can be used to develop task-oriented text agents for accomplishing tasks with high-...