In this work we explore data-driven deep reinforcement learning (RL) approaches for an autonomous agent to be robust to a navigation task, and act correctly in the face of risk and uncertainty. We investigate the effects that sudden changes to environment conditions have on autonomous agents and explore methods which allow an agent to have a high degree of generalization to unforeseen, sudden modifications to its environment it was not explicitly trained to handle. Inspired by the human dopamine circuit, the performance of an RL agent is measured and optimized in terms of rewards and penalties it receives for desirable or undesirable behaviour. Our initial approach is to learn to estimate the distribution of expected rewards from the agent,...
There are many different methods for the deliberative control of autonomous systems in stochastic en...
Un des défis majeurs de l'apprentissage par renforcement est d'explorer efficacement un environnemen...
Reinforcement learning allows an agent to learn a behavior that has never been previously defined by...
In this work we explore data-driven deep reinforcement learning (RL) approaches for an autonomous ag...
In this work we explore data-driven deep reinforcement learning (RL) approaches for an autonomous ag...
In reinforcement learning (RL), an agent learns to solve a task by interacting with its environment....
In reinforcement learning (RL), an agent learns to solve a task by interacting with its environment....
Deep Reinforcement Learning (DRL), is becoming a popular and mature framework for learning to solve ...
Autonomous robotic agents have begun to impact many aspects of our society, with application in auto...
Reinforcement learning is an approach to solve a sequential decision making problem. In this formali...
There are many different methods for the deliberative control of autonomous systems in stochastic en...
Autonomous robotic agents have begun to impact many aspects of our society, with application in auto...
There are many different methods for the deliberative control of autonomous systems in stochastic en...
Reinforcement learning is an approach to solve a sequential decision making problem. In this formali...
Un des défis majeurs de l'apprentissage par renforcement est d'explorer efficacement un environnemen...
There are many different methods for the deliberative control of autonomous systems in stochastic en...
Un des défis majeurs de l'apprentissage par renforcement est d'explorer efficacement un environnemen...
Reinforcement learning allows an agent to learn a behavior that has never been previously defined by...
In this work we explore data-driven deep reinforcement learning (RL) approaches for an autonomous ag...
In this work we explore data-driven deep reinforcement learning (RL) approaches for an autonomous ag...
In reinforcement learning (RL), an agent learns to solve a task by interacting with its environment....
In reinforcement learning (RL), an agent learns to solve a task by interacting with its environment....
Deep Reinforcement Learning (DRL), is becoming a popular and mature framework for learning to solve ...
Autonomous robotic agents have begun to impact many aspects of our society, with application in auto...
Reinforcement learning is an approach to solve a sequential decision making problem. In this formali...
There are many different methods for the deliberative control of autonomous systems in stochastic en...
Autonomous robotic agents have begun to impact many aspects of our society, with application in auto...
There are many different methods for the deliberative control of autonomous systems in stochastic en...
Reinforcement learning is an approach to solve a sequential decision making problem. In this formali...
Un des défis majeurs de l'apprentissage par renforcement est d'explorer efficacement un environnemen...
There are many different methods for the deliberative control of autonomous systems in stochastic en...
Un des défis majeurs de l'apprentissage par renforcement est d'explorer efficacement un environnemen...
Reinforcement learning allows an agent to learn a behavior that has never been previously defined by...