Transfer learning in deep reinforcement learning: A survey
Reinforcement learning is a learning paradigm for solving sequential decision-making
problems. Recent years have witnessed remarkable progress in reinforcement learning …
problems. Recent years have witnessed remarkable progress in reinforcement learning …
Curriculum learning for reinforcement learning domains: A framework and survey
Reinforcement learning (RL) is a popular paradigm for addressing sequential decision tasks
in which the agent has only limited environmental feedback. Despite many advances over …
in which the agent has only limited environmental feedback. Despite many advances over …
Mt-opt: Continuous multi-task robotic reinforcement learning at scale
General-purpose robotic systems must master a large repertoire of diverse skills to be useful
in a range of daily tasks. While reinforcement learning provides a powerful framework for …
in a range of daily tasks. While reinforcement learning provides a powerful framework for …
Learning by playing solving sparse reward tasks from scratch
Abstract We propose Scheduled Auxiliary Control (SAC-X), a new learning paradigm in the
context of Reinforcement Learning (RL). SAC-X enables learning of complex behaviors-from …
context of Reinforcement Learning (RL). SAC-X enables learning of complex behaviors-from …
Transfer learning
Transfer learning is the improvement of learning in a new task through the transfer of
knowledge from a related task that has already been learned. While most machine learning …
knowledge from a related task that has already been learned. While most machine learning …
Bayesian reinforcement learning
This chapter surveys recent lines of work that use Bayesian techniques for reinforcement
learning. In Bayesian learning, uncertainty is expressed by a prior distribution over unknown …
learning. In Bayesian learning, uncertainty is expressed by a prior distribution over unknown …
Transfer learning
SJ Pan - Learning, 2020 - api.taylorfrancis.com
Supervised machine learning techniques have already been widely studied and applied to
various real-world applications. However, most existing supervised algorithms work well …
various real-world applications. However, most existing supervised algorithms work well …
Transfer in reinforcement learning: a framework and a survey
A Lazaric - Reinforcement Learning: State-of-the-Art, 2012 - Springer
Transfer in reinforcement learning is a novel research area that focuses on the development
of methods to transfer knowledge from a set of source tasks to a target task. Whenever the …
of methods to transfer knowledge from a set of source tasks to a target task. Whenever the …
Sharing knowledge in multi-task deep reinforcement learning
We study the benefit of sharing representations among tasks to enable the effective use of
deep neural networks in Multi-Task Reinforcement Learning. We leverage the assumption …
deep neural networks in Multi-Task Reinforcement Learning. We leverage the assumption …
[PDF][PDF] Towards Sample Efficient Reinforcement Learning.
Y Yu - IJCAI, 2018 - ijcai.org
Reinforcement learning is a major tool to realize intelligent agents that can be autonomously
adaptive to the environment. With deep models, reinforcement learning has shown great …
adaptive to the environment. With deep models, reinforcement learning has shown great …