We present Bayesian Team Imitation Learner (BTIL), an imitation learning algorithm to model the behavior of teams performing sequential tasks in Markovian domains. In contrast to existing multi-agent imitation learning techniques, BTIL explicitly models and infers the time-varying mental states of team members, thereby enabling learning of decentralized team policies from demonstrations of suboptimal teamwork. Further, to allow for sample- and label-efficient policy learning from small datasets, BTIL employs a Bayesian perspective and is capable of learning from semi-supervised demonstrations. We demonstrate and benchmark the performance of BTIL on synthetic multi-agent tasks as well as a novel dataset of human-agent teamwork. Our experimen...
Reinforcement Learning has achieved noticeable success in many fields, such as video game playing, c...
Offline imitation from observations aims to solve MDPs where only task-specific expert states and ta...
A fundamental challenge in robotics today is building robots that can learn new skills by observing ...
This dissertation addresses the problem of building collaboration in a team of \ud autonomous agents...
We study the problem of imitation learning from demonstrations of multiple coordinating agents. One ...
Many existing imitation learning datasets are collected from multiple demonstrators, each with diffe...
We develop a simple framework to learn bio-inspired foraging policies using human data. We conduct a...
In this paper we discuss how agents can learn to do things by imitating other agents. Especially we ...
Imitation can be viewed as a means of enhancing learning in multiagent environments. It augments an...
In the context of humans operating with artificial or autonomous agents in a hybrid team, it is esse...
Human and robot partners increasingly need to work together to perform tasks as a team. Robots desig...
Humans demonstrate a variety of interesting behavioral characteristics when performing tasks, such a...
In imitation learning, imitators and demonstrators are policies for picking actions given past inter...
International audienceImitation Learning (IL) is a machine learning approach to learn a policy from ...
Imitation is an example of social learning in which an individual observes and copies another's acti...
Reinforcement Learning has achieved noticeable success in many fields, such as video game playing, c...
Offline imitation from observations aims to solve MDPs where only task-specific expert states and ta...
A fundamental challenge in robotics today is building robots that can learn new skills by observing ...
This dissertation addresses the problem of building collaboration in a team of \ud autonomous agents...
We study the problem of imitation learning from demonstrations of multiple coordinating agents. One ...
Many existing imitation learning datasets are collected from multiple demonstrators, each with diffe...
We develop a simple framework to learn bio-inspired foraging policies using human data. We conduct a...
In this paper we discuss how agents can learn to do things by imitating other agents. Especially we ...
Imitation can be viewed as a means of enhancing learning in multiagent environments. It augments an...
In the context of humans operating with artificial or autonomous agents in a hybrid team, it is esse...
Human and robot partners increasingly need to work together to perform tasks as a team. Robots desig...
Humans demonstrate a variety of interesting behavioral characteristics when performing tasks, such a...
In imitation learning, imitators and demonstrators are policies for picking actions given past inter...
International audienceImitation Learning (IL) is a machine learning approach to learn a policy from ...
Imitation is an example of social learning in which an individual observes and copies another's acti...
Reinforcement Learning has achieved noticeable success in many fields, such as video game playing, c...
Offline imitation from observations aims to solve MDPs where only task-specific expert states and ta...
A fundamental challenge in robotics today is building robots that can learn new skills by observing ...