The concepts of attention and intrinsic motivations are of great interest within adaptive robotic systems, and can be exploited in order to guide, activate, and coordinate multiple concurrent behaviors. Attention allocation strategies represent key capabilities of human beings, which are strictly connected with action selection and execution mechanisms, while intrinsic motivations directly affect the allocation of attentional resources. In this paper we propose a model of Reinforcement Learning (RL), where both these capabilities are involved. RL is deployed to learn how to allocate attentional resources in a behavior-based robotic system, while action selection is obtained as a side effect of the resulting motivated attentional behaviors. ...
We illustrate research run within the EU project IM-CLeVeR ("Intrinsically Motivated Cumulative Lear...
The reinforcement learning (RL) research area is very active, with an important number of new contri...
International audienceThe reinforcement learning (RL) research area is very active, with an importan...
The concepts of attention and intrinsic motivations are of great interest within adaptive robotic sy...
The concepts of attention and intrinsic motivations are of great interest within adaptive robotic sy...
The concepts of attention and intrinsic motivations are of great interest within adaptive robotic sy...
Autonomous acquisition of many different skills is neces- sary to foster behavioural versatility in ...
In reinforcement learning, reward is used to guide the learning process. The reward is often designe...
Abstract — Motivation is a key factor in human learning. We learn best when we are highly motivated ...
In classical reinforcement learning framework, an external, handcrafted reward typically drives the ...
Most sophisticated mammals, in particular primates, interact with the world to acquire knowledge and...
Abstract—Cognitive research shows that emotions guide an organism’s actions and perceptive focus. A ...
In classical reinforcement learning framework, an external, handcrafted reward typically drives the ...
Humans and other animals often engage in activities for their own sakes rather than as steps toward ...
An emerging body of research is focusing on understanding and building artificial systems that can a...
We illustrate research run within the EU project IM-CLeVeR ("Intrinsically Motivated Cumulative Lear...
The reinforcement learning (RL) research area is very active, with an important number of new contri...
International audienceThe reinforcement learning (RL) research area is very active, with an importan...
The concepts of attention and intrinsic motivations are of great interest within adaptive robotic sy...
The concepts of attention and intrinsic motivations are of great interest within adaptive robotic sy...
The concepts of attention and intrinsic motivations are of great interest within adaptive robotic sy...
Autonomous acquisition of many different skills is neces- sary to foster behavioural versatility in ...
In reinforcement learning, reward is used to guide the learning process. The reward is often designe...
Abstract — Motivation is a key factor in human learning. We learn best when we are highly motivated ...
In classical reinforcement learning framework, an external, handcrafted reward typically drives the ...
Most sophisticated mammals, in particular primates, interact with the world to acquire knowledge and...
Abstract—Cognitive research shows that emotions guide an organism’s actions and perceptive focus. A ...
In classical reinforcement learning framework, an external, handcrafted reward typically drives the ...
Humans and other animals often engage in activities for their own sakes rather than as steps toward ...
An emerging body of research is focusing on understanding and building artificial systems that can a...
We illustrate research run within the EU project IM-CLeVeR ("Intrinsically Motivated Cumulative Lear...
The reinforcement learning (RL) research area is very active, with an important number of new contri...
International audienceThe reinforcement learning (RL) research area is very active, with an importan...