Meta-reinforcement learning enables artificial agents to learn from related training tasks and adapt to new tasks efficiently with minimal interaction data. However, most existing research is still limited to narrow task distributions that are parametric and stationary, and does not consider out-of-distribution tasks during the evaluation, thus, restricting its application. In this paper, we propose MoSS, a context-based Meta-reinforcement learning algorithm based on Self-Supervised task representation learning to address this challenge. We extend meta-RL to broad non-parametric task distributions which have never been explored before, and also achieve state-of-the-art results in non-stationary and out-of-distribution tasks. Specifically, M...
In this thesis, we discuss meta learning for control:policy learning algorithms that can themselves ...
16 pages, 14 figuresWith the increasing presence of robots in our every-day environments, improving ...
Meta reinforcement learning (Meta RL) has been amply explored to quickly learn an unseen task by tra...
Many real-world domains are subject to a structured non-stationarity which affects the agent's goals...
Meta-reinforcement learning has the potential to enable artificial agents to master new skills with ...
Reinforcement Learning (RL) is a way to train artificial agents to autonomously interact with the wo...
Meta-reinforcement learning (meta-RL) algorithms enable agents to adapt quickly to tasks from few sa...
Intelligent agents should have the ability to leverage knowledge from previously learned tasks in or...
Modern deep reinforcement learning (RL) algorithms, despite being at the forefront of artificial int...
Supplementary files for article Context meta-reinforcement learning via neuromodulation Meta-reinfor...
Context, the embedding of previous collected trajectories, is a powerful construct for Meta-Reinforc...
Learning from small data sets is critical in many practical applications where data collection is ti...
In Meta-Reinforcement Learning (meta-RL) agents are trained on a set of tasks to prepare for and lea...
Existing offline reinforcement learning (RL) methods face a few major challenges, particularly the d...
In machine learning, meta-learning methods aim for fast adaptability to unknown tasks using prior kn...
In this thesis, we discuss meta learning for control:policy learning algorithms that can themselves ...
16 pages, 14 figuresWith the increasing presence of robots in our every-day environments, improving ...
Meta reinforcement learning (Meta RL) has been amply explored to quickly learn an unseen task by tra...
Many real-world domains are subject to a structured non-stationarity which affects the agent's goals...
Meta-reinforcement learning has the potential to enable artificial agents to master new skills with ...
Reinforcement Learning (RL) is a way to train artificial agents to autonomously interact with the wo...
Meta-reinforcement learning (meta-RL) algorithms enable agents to adapt quickly to tasks from few sa...
Intelligent agents should have the ability to leverage knowledge from previously learned tasks in or...
Modern deep reinforcement learning (RL) algorithms, despite being at the forefront of artificial int...
Supplementary files for article Context meta-reinforcement learning via neuromodulation Meta-reinfor...
Context, the embedding of previous collected trajectories, is a powerful construct for Meta-Reinforc...
Learning from small data sets is critical in many practical applications where data collection is ti...
In Meta-Reinforcement Learning (meta-RL) agents are trained on a set of tasks to prepare for and lea...
Existing offline reinforcement learning (RL) methods face a few major challenges, particularly the d...
In machine learning, meta-learning methods aim for fast adaptability to unknown tasks using prior kn...
In this thesis, we discuss meta learning for control:policy learning algorithms that can themselves ...
16 pages, 14 figuresWith the increasing presence of robots in our every-day environments, improving ...
Meta reinforcement learning (Meta RL) has been amply explored to quickly learn an unseen task by tra...