Here the Newton’s Method direct action selection approach to continuous action-space reinforcement learning is extended to use an eligibility trace. This is then compared to the momentum term approach from the literature in terms of the update equations and also the success rate and number of trials required to train on two variants of the simulated Cart-Pole benchmark problem. The eligibility trace approach achieves a higher success rate with a far wider range of parameter values than the momentum approach and also trains in fewer trials on the Cart-Pole problem
Mobile robots are increasingly being employed for performing complex tasks in dynamic environments. ...
Trial and error learning methods are often ineffective when applied to robots. This is due to certa...
Unifying seemingly disparate algorithmic ideas to produce better performing algorithms has been a lo...
Here the Newton’s Method direct action selection approach to continuous action-space reinforcement l...
In this paper I investigate methods of applying reinforcement learning to continuous state- and acti...
An algorithm based on Newton’s Method is proposed for action selection in continuous state- and acti...
Abstract. An algorithm based on Newton’s Method is proposed for ac-tion selection in continuous stat...
An algorithm based on Newton's Method is proposed for action selection in continuous state- and acti...
Reinforcement learning in the continuous state-space poses the problem of the inability to store the...
Institute for Adaptive and Neural ComputationAward number: 98318242.This thesis is about the dynamic...
The reinforcement learning (RL) framework enables to construct controllers that try to find find an ...
Here I apply three reinforcement learning methods to the full, continuous action, swing-up acrobot c...
Here I apply three reinforcement learning methods to the full, continuous action, swing-up acrobot c...
Reinforcement learning methods can be used in robotics applications especially for specific target-o...
Continuous space reinforcement learning algorithms frequently fail to address the possibility of a c...
Mobile robots are increasingly being employed for performing complex tasks in dynamic environments. ...
Trial and error learning methods are often ineffective when applied to robots. This is due to certa...
Unifying seemingly disparate algorithmic ideas to produce better performing algorithms has been a lo...
Here the Newton’s Method direct action selection approach to continuous action-space reinforcement l...
In this paper I investigate methods of applying reinforcement learning to continuous state- and acti...
An algorithm based on Newton’s Method is proposed for action selection in continuous state- and acti...
Abstract. An algorithm based on Newton’s Method is proposed for ac-tion selection in continuous stat...
An algorithm based on Newton's Method is proposed for action selection in continuous state- and acti...
Reinforcement learning in the continuous state-space poses the problem of the inability to store the...
Institute for Adaptive and Neural ComputationAward number: 98318242.This thesis is about the dynamic...
The reinforcement learning (RL) framework enables to construct controllers that try to find find an ...
Here I apply three reinforcement learning methods to the full, continuous action, swing-up acrobot c...
Here I apply three reinforcement learning methods to the full, continuous action, swing-up acrobot c...
Reinforcement learning methods can be used in robotics applications especially for specific target-o...
Continuous space reinforcement learning algorithms frequently fail to address the possibility of a c...
Mobile robots are increasingly being employed for performing complex tasks in dynamic environments. ...
Trial and error learning methods are often ineffective when applied to robots. This is due to certa...
Unifying seemingly disparate algorithmic ideas to produce better performing algorithms has been a lo...