We describe a density-adaptive reinforcement learning and a density-adaptive forgetting algorithm. This learning algorithm uses hybrid k-D/2k-trees to allow for a variable resolution partitioning and labelling of the input space. The density adaptive forgetting algorithm deletes observations from the learning set depending on whether subsequent evidence is available in a local region of the parameter space. The algorithms are demonstrated in a simulation for learning feasible robotic grasp approach directions and orientations and then adapting to subsequent mechanical failures in the gripper
It is a neural network truth universally acknowledged, that the signal transmitted to a target node ...
One of the most important and ubiquitous building blocks of machine learning is gradient based optim...
The governor architecture is a new method for avoiding catatrophic forgetting in neural networks tha...
We describe a density-adaptive reinforcement learning and a density-adaptive forgetting algorithm. ...
We study learning of perception-action relations using visually-driven grasping as an example task. ...
Memory-based learning algorithms lack a mechanism for tracking time-varying associative mappings. To...
Neural networks have had many great successes in recent years, particularly with the advent of deep ...
2017 Summer.Includes bibliographical references.This dissertation presents knowledge acquisition and...
Trial and error learning methods are often ineffective when applied to robots. This is due to certa...
Letter: Communicated by Masa-aki Sato.Function approximation in online, incremental, reinforcement l...
Reinforcement Learning (RL) algorithms allow artificial agents to improve their action selection pol...
Treballs Finals de Grau de Física, Facultat de Física, Universitat de Barcelona, Any: 2015, Tutor: P...
Between acquiring new knowledge and reviewing old knowledge to mitigate forgetting, learners may fin...
The successful application of Reinforcement Learning (RL) techniques to robot control is limited by ...
Abstract: The successful application of Reinforcement Learning (RL) techniques to robot control is l...
It is a neural network truth universally acknowledged, that the signal transmitted to a target node ...
One of the most important and ubiquitous building blocks of machine learning is gradient based optim...
The governor architecture is a new method for avoiding catatrophic forgetting in neural networks tha...
We describe a density-adaptive reinforcement learning and a density-adaptive forgetting algorithm. ...
We study learning of perception-action relations using visually-driven grasping as an example task. ...
Memory-based learning algorithms lack a mechanism for tracking time-varying associative mappings. To...
Neural networks have had many great successes in recent years, particularly with the advent of deep ...
2017 Summer.Includes bibliographical references.This dissertation presents knowledge acquisition and...
Trial and error learning methods are often ineffective when applied to robots. This is due to certa...
Letter: Communicated by Masa-aki Sato.Function approximation in online, incremental, reinforcement l...
Reinforcement Learning (RL) algorithms allow artificial agents to improve their action selection pol...
Treballs Finals de Grau de Física, Facultat de Física, Universitat de Barcelona, Any: 2015, Tutor: P...
Between acquiring new knowledge and reviewing old knowledge to mitigate forgetting, learners may fin...
The successful application of Reinforcement Learning (RL) techniques to robot control is limited by ...
Abstract: The successful application of Reinforcement Learning (RL) techniques to robot control is l...
It is a neural network truth universally acknowledged, that the signal transmitted to a target node ...
One of the most important and ubiquitous building blocks of machine learning is gradient based optim...
The governor architecture is a new method for avoiding catatrophic forgetting in neural networks tha...