International audienceBuilding autonomous machines that can explore open-ended environments, discover possible interactions and build repertoires of skills is a general objective of artificial intelligence. Developmental approaches argue that this can only be achieved by autotelic agents: intrinsically motivated learning agents that can learn to represent, generate, select and solve their own problems. In recent years, the convergence of developmental approaches with deep reinforcement learning (rl) methods has been leading to the emergence of a new field: developmental reinforcement learning. Developmental rl is concerned with the use of deep rl algorithms to tackle a developmental problem-the intrinsically motivated acquisition of open-en...
Reinforcement learning (RL) often struggles to accomplish a sparse-reward long-horizon task in a com...
In this paper, we present goal-discovering robotic architecture for intrisically-motivated learning ...
In reinforcement learning (RL), an agent learns to solve a task by interacting with its environment....
Building autonomous machines that can explore open-ended environments, discover possible interaction...
Published at JMLR 2022International audienceIntrinsically motivated spontaneous exploration is a key...
Autonomous acquisition of many different skills is neces- sary to foster behavioural versatility in ...
A long-standing goal of Machine Learning (ML) and AI at large is to design autonomous agents able to...
One of the primary challenges of developmental robotics is the question of how to learn and represen...
One of the primary challenges of developmental robotics is the question of how to learn and represe...
In reinforcement learning, reward is used to guide the learning process. The reward is often designe...
Humans and other animals often engage in activities for their own sakes rather than as steps toward ...
How can a population of reinforcement learning agents autonomously learn a diversity of cooperative ...
Goals provide a high-level abstraction of an agent’s objectives and guide its behavior in complex en...
Life-long learning of reusable, versatile skills is a key prerequisite forembodied agents that act i...
Reinforcement learning (RL) is today more popular than ever, but certain basic skills are still out ...
Reinforcement learning (RL) often struggles to accomplish a sparse-reward long-horizon task in a com...
In this paper, we present goal-discovering robotic architecture for intrisically-motivated learning ...
In reinforcement learning (RL), an agent learns to solve a task by interacting with its environment....
Building autonomous machines that can explore open-ended environments, discover possible interaction...
Published at JMLR 2022International audienceIntrinsically motivated spontaneous exploration is a key...
Autonomous acquisition of many different skills is neces- sary to foster behavioural versatility in ...
A long-standing goal of Machine Learning (ML) and AI at large is to design autonomous agents able to...
One of the primary challenges of developmental robotics is the question of how to learn and represen...
One of the primary challenges of developmental robotics is the question of how to learn and represe...
In reinforcement learning, reward is used to guide the learning process. The reward is often designe...
Humans and other animals often engage in activities for their own sakes rather than as steps toward ...
How can a population of reinforcement learning agents autonomously learn a diversity of cooperative ...
Goals provide a high-level abstraction of an agent’s objectives and guide its behavior in complex en...
Life-long learning of reusable, versatile skills is a key prerequisite forembodied agents that act i...
Reinforcement learning (RL) is today more popular than ever, but certain basic skills are still out ...
Reinforcement learning (RL) often struggles to accomplish a sparse-reward long-horizon task in a com...
In this paper, we present goal-discovering robotic architecture for intrisically-motivated learning ...
In reinforcement learning (RL), an agent learns to solve a task by interacting with its environment....