When deploying autonomous agents in the real world, we need effective ways of communicating objectives to them. Traditional skill learning has revolved around reinforcement and imitation learning, each with rigid constraints on the format of information exchanged between the human and the agent. While scalar rewards carry little information, demonstrations require significant effort to provide and may carry more information than is necessary. Furthermore, rewards and demonstrations are often defined and collected before training begins, when the human is most uncertain about what information would help the agent. In contrast, when humans communicate objectives with each other, they make use of a large vocabulary of informative behaviors, in...
Learning from rewards generated by a human trainer observing an agent in action has proven to be a p...
The ability to learn is essential to intelligent agents that need to adapt to dynamic, non-determini...
This paper discusses the significance of communication between individual agents that are embedded i...
In this work, we address a relatively unexplored aspect of designing agents that learn from human re...
Cooperation is a widespread phenomenon in nature that has also been a cornerstone in the development...
International audienceIn this work, we focus on human-agent interaction where the role of the social...
Learning from rewards generated by a human trainer observing an agent in action has been proven to b...
This paper presents an algorithm for learning the meaning of messages communicated between agents th...
The emergence of Multiagent systems brought new challenges to the field of Machine Learning, as it d...
Building intelligent agents that can help humans accomplish everyday tasks, such as a personal robot...
Abstract. In complex application systems, there are typically not only autonomous components which c...
In the vision and language navigation task (Anderson et al. 2018), the agent may encounter ambiguous...
In this paper, we address a relatively unexplored aspect of designing agents that learn from human t...
Abstract — In order to be useful in real-world situations, it is critical to allow non-technical use...
In this paper, we address a relatively unexplored aspect of designing agents that learn from human t...
Learning from rewards generated by a human trainer observing an agent in action has proven to be a p...
The ability to learn is essential to intelligent agents that need to adapt to dynamic, non-determini...
This paper discusses the significance of communication between individual agents that are embedded i...
In this work, we address a relatively unexplored aspect of designing agents that learn from human re...
Cooperation is a widespread phenomenon in nature that has also been a cornerstone in the development...
International audienceIn this work, we focus on human-agent interaction where the role of the social...
Learning from rewards generated by a human trainer observing an agent in action has been proven to b...
This paper presents an algorithm for learning the meaning of messages communicated between agents th...
The emergence of Multiagent systems brought new challenges to the field of Machine Learning, as it d...
Building intelligent agents that can help humans accomplish everyday tasks, such as a personal robot...
Abstract. In complex application systems, there are typically not only autonomous components which c...
In the vision and language navigation task (Anderson et al. 2018), the agent may encounter ambiguous...
In this paper, we address a relatively unexplored aspect of designing agents that learn from human t...
Abstract — In order to be useful in real-world situations, it is critical to allow non-technical use...
In this paper, we address a relatively unexplored aspect of designing agents that learn from human t...
Learning from rewards generated by a human trainer observing an agent in action has proven to be a p...
The ability to learn is essential to intelligent agents that need to adapt to dynamic, non-determini...
This paper discusses the significance of communication between individual agents that are embedded i...