The manipulation of complex robotics, which is in general high-dimensional continuous control without an accurate dynamic model, summons studies and applications of reinforcement learning (RL) algorithms. Typically, RL learns with the objective of maximizing the accumulated rewards from interactions with the environment. In reality, external rewards are not trivial, which depend on either expert knowledge or domain priors. Recent advances on hindsight experience replay (HER) instead enable a robot to learn from the automatically generated sparse and binary rewards, indicating whether it reaches the desired goals or pseudo goals. However, HER inevitably introduces hindsight bias that skews the optimal control since the replays against the ac...
Episodic self-imitation learning, a novel self-imitation algorithm with a trajectory selection modul...
Multi-goal reinforcement learning is widely applied in planning and robot manipulation. Two main cha...
Experience replay memory in reinforcement learning enables agents to remember and reuse past experie...
One of the main targets of artificial intelligence is to solve the complex control problems which ha...
Experience replay is a technique that allows off-policy reinforcement-learning methods to reuse past...
Simple day-to-day activities like picking up or reaching out to an object seem easy for a human, but...
Sharing prior knowledge across multiple robotic manipulation tasks is a challenging research topic. ...
This paper deals with robotic lever control using Explainable Deep Reinforcement Learning. First, we...
Hindsight experience replay (HER) is a goal relabelling technique typically used with off-policy dee...
Dealing with sparse rewards is a longstanding challenge in reinforcement learning. The recent use of...
A modern synthesis of many studies examining hippocampal replay in decision-making tasks suggests th...
For robots to perform tasks in the unstructured environments of the real world, they must be able to...
Deep Reinforcement Learning (DRL) enables us to design controllers for complex tasks with a deep lea...
Recent years have seen a growing interest in the use of deep neural networks as function approximato...
One of the most challenging types of environments for a Deep Reinforcement Learning agent to learn i...
Episodic self-imitation learning, a novel self-imitation algorithm with a trajectory selection modul...
Multi-goal reinforcement learning is widely applied in planning and robot manipulation. Two main cha...
Experience replay memory in reinforcement learning enables agents to remember and reuse past experie...
One of the main targets of artificial intelligence is to solve the complex control problems which ha...
Experience replay is a technique that allows off-policy reinforcement-learning methods to reuse past...
Simple day-to-day activities like picking up or reaching out to an object seem easy for a human, but...
Sharing prior knowledge across multiple robotic manipulation tasks is a challenging research topic. ...
This paper deals with robotic lever control using Explainable Deep Reinforcement Learning. First, we...
Hindsight experience replay (HER) is a goal relabelling technique typically used with off-policy dee...
Dealing with sparse rewards is a longstanding challenge in reinforcement learning. The recent use of...
A modern synthesis of many studies examining hippocampal replay in decision-making tasks suggests th...
For robots to perform tasks in the unstructured environments of the real world, they must be able to...
Deep Reinforcement Learning (DRL) enables us to design controllers for complex tasks with a deep lea...
Recent years have seen a growing interest in the use of deep neural networks as function approximato...
One of the most challenging types of environments for a Deep Reinforcement Learning agent to learn i...
Episodic self-imitation learning, a novel self-imitation algorithm with a trajectory selection modul...
Multi-goal reinforcement learning is widely applied in planning and robot manipulation. Two main cha...
Experience replay memory in reinforcement learning enables agents to remember and reuse past experie...