To understand environments effectively and to interact safely with humans, robots must generalize their learned models to scenarios they have never been trained on before, such as new commands and new agents. Humans have shown a remarkable ability to compose concepts they have learned before in order to interpret and to act in a novel environment. In contrast, many deep-learning based methods fail at compositional generalization, i.e., an ability to generalize to novel combinations of concepts that have not been seen before in training. This thesis presents several learning-based approaches that leverage compositionally to enable generalization in various reasoning skills such as language understanding and social interactions. First, we sho...
The objective of this work is to augment the basic abilities of a robot by learning to use sensorim...
Researchers have been seeking intelligent robotic systems that can accomplish complex tasks autonomo...
Abstract—We propose a sub-symbolic connectionist model in which a compositional system self-organize...
We demonstrate how a sampling-based robotic planner can be augmented to learn to understand a sequen...
Humans are remarkably flexible when under- standing new sentences that include combinations of conce...
Populations of simulated agents controlled by dynamical neural networks are trained by artificial ev...
We demonstrate how a reinforcement learning agent can use compositional recurrent neural networks to...
We present a novel connectionist model for acquiring the semantics of language through the behaviora...
To what extent do human reward learning and decision-making rely on the ability to represent and gen...
Abstract—Populations of simulated agents controlled by dy-namical neural networks are trained by art...
Humans are remarkably proficient at decomposing and recombiningconcepts they have learned. In contra...
This position paper proposes that the study of embodied cognitive agents, such as humanoid robots, ...
This position paper proposes that the study of embodied cognitive agents, such as humanoid robots, c...
Robotic agents performing domestic chores by natural language directives are required to master the ...
© 2017 IEEE. There has been a great deal of work on learning new robot skills, but very little consi...
The objective of this work is to augment the basic abilities of a robot by learning to use sensorim...
Researchers have been seeking intelligent robotic systems that can accomplish complex tasks autonomo...
Abstract—We propose a sub-symbolic connectionist model in which a compositional system self-organize...
We demonstrate how a sampling-based robotic planner can be augmented to learn to understand a sequen...
Humans are remarkably flexible when under- standing new sentences that include combinations of conce...
Populations of simulated agents controlled by dynamical neural networks are trained by artificial ev...
We demonstrate how a reinforcement learning agent can use compositional recurrent neural networks to...
We present a novel connectionist model for acquiring the semantics of language through the behaviora...
To what extent do human reward learning and decision-making rely on the ability to represent and gen...
Abstract—Populations of simulated agents controlled by dy-namical neural networks are trained by art...
Humans are remarkably proficient at decomposing and recombiningconcepts they have learned. In contra...
This position paper proposes that the study of embodied cognitive agents, such as humanoid robots, ...
This position paper proposes that the study of embodied cognitive agents, such as humanoid robots, c...
Robotic agents performing domestic chores by natural language directives are required to master the ...
© 2017 IEEE. There has been a great deal of work on learning new robot skills, but very little consi...
The objective of this work is to augment the basic abilities of a robot by learning to use sensorim...
Researchers have been seeking intelligent robotic systems that can accomplish complex tasks autonomo...
Abstract—We propose a sub-symbolic connectionist model in which a compositional system self-organize...