Computer simulation experiments were performed to examine the effectiveness of OR- and comparative-reinforcement learning algorithms. In the simulation, human rewards were given as +1 and -1. Two models of human instruction that determine which reward is to be given in every step of a human instruction were used. Results show that human instruction may have a possibility of including both model-A and model-B characteristics, and it can be expected that the comparative-reinforcement learning algorithm is more effective for learning by human instructions
Robots are extending their presence in domestic environments every day, it being more common to see ...
As technology continues to evolve at a rapid pace, robots are becoming an increasingly common sight ...
Genetic Algorithms are used to learn navigation and collision avoidance behaviors for robots. The le...
AbstractWhile Reinforcement Learning (RL) is not traditionally designed for interactive supervisory ...
The high request for autonomous human-robot interaction (HRI), combined with the potential of machin...
As robots become a mass consumer product, they will need to learn new skills by interacting with typ...
designed for interactive supervisory input from a human teacher, several works in both robot and sof...
We are approaching a future where robots and humans will co-exist and co-adapt. To understand how ca...
Proper interaction is a crucial aspect of team collaborations for successfully achieving a common go...
Abstract. Computer models can be used to investigate the role of emotion in learning. Here we presen...
The ability to learn new tasks by sequencing already known skills is an important requirement for fu...
International audienceDynamic uncontrolled human-robot interaction requires robots to be able to ada...
Humans can leverage physical interaction to teach robot arms. This physical interaction takes multip...
In this paper we describe how a robot may benefit from active learning in a human-robot tutelage set...
This paper argues that natural interaction with a machine can be realized and improved by using lear...
Robots are extending their presence in domestic environments every day, it being more common to see ...
As technology continues to evolve at a rapid pace, robots are becoming an increasingly common sight ...
Genetic Algorithms are used to learn navigation and collision avoidance behaviors for robots. The le...
AbstractWhile Reinforcement Learning (RL) is not traditionally designed for interactive supervisory ...
The high request for autonomous human-robot interaction (HRI), combined with the potential of machin...
As robots become a mass consumer product, they will need to learn new skills by interacting with typ...
designed for interactive supervisory input from a human teacher, several works in both robot and sof...
We are approaching a future where robots and humans will co-exist and co-adapt. To understand how ca...
Proper interaction is a crucial aspect of team collaborations for successfully achieving a common go...
Abstract. Computer models can be used to investigate the role of emotion in learning. Here we presen...
The ability to learn new tasks by sequencing already known skills is an important requirement for fu...
International audienceDynamic uncontrolled human-robot interaction requires robots to be able to ada...
Humans can leverage physical interaction to teach robot arms. This physical interaction takes multip...
In this paper we describe how a robot may benefit from active learning in a human-robot tutelage set...
This paper argues that natural interaction with a machine can be realized and improved by using lear...
Robots are extending their presence in domestic environments every day, it being more common to see ...
As technology continues to evolve at a rapid pace, robots are becoming an increasingly common sight ...
Genetic Algorithms are used to learn navigation and collision avoidance behaviors for robots. The le...