Deep reinforcement learning which involved reinforcement learning with artificial neural networks allows an agent to take the best possible actions in a virtual environment to achieve goals. Spike neuron has a non-differentiable spike generation function that caused SNN training faced difficulty. In order to overcome the difficulty, Deep Q Network (DQN) is proposed to act as an agent to interact with a custom environment. A spike neuron is modelled by using NEST simulator. Rewards are given to the agent for every action taken. The model is trained and tested to validate the performance of the trained model in order to attain balance the firing rate of excitatory and inhibitory population of spike neuron. Training result showed the agent abl...
Neural networks allow Q-learning reinforcement learning agents such as deep Q-networks (DQN) to appr...
Deep Q-learning Network (DQN) is a successful way which combines reinforcement learning with deep ne...
In this article, we address two key challenges in deep reinforcement learning (DRL) setting, sample ...
Deep reinforcement learning (DRL) which involved reinforcement learning and artificial neural networ...
Spiking neural networks (SNNs) have great potential for energy-efficient implementation of Deep Neu...
In the past decade, machine learning strategies centered on the use of Deep Neural Networks (DNNs) h...
In this paper the two reinforcement learning algorithmsQ-learning and deep Q-learning (DQN) are used...
The combination of Deep Learning and Reinforcement Learning, termed Deep Reinforcement Learning Netw...
The deep learning community has greatly progressed towards integrating deep neural nets with reinfor...
Reinforcement learning can be compared to howhumans learn – by interaction, which is the fundamental...
This paper presents a modification of the deep Q-network (DQN) in deep reinforcement learning to con...
Neural network simulation is an important tool for generating and evaluating hypotheses on the struc...
Humans possess an exceptional aptitude to efficiently make decisions from high-dimensional sensory o...
The aim of this thesis is to use deep neural networks for task in reinforcement learning. I use my m...
This paper proposes a neural network based reinforcement learning controller that is able to learn c...
Neural networks allow Q-learning reinforcement learning agents such as deep Q-networks (DQN) to appr...
Deep Q-learning Network (DQN) is a successful way which combines reinforcement learning with deep ne...
In this article, we address two key challenges in deep reinforcement learning (DRL) setting, sample ...
Deep reinforcement learning (DRL) which involved reinforcement learning and artificial neural networ...
Spiking neural networks (SNNs) have great potential for energy-efficient implementation of Deep Neu...
In the past decade, machine learning strategies centered on the use of Deep Neural Networks (DNNs) h...
In this paper the two reinforcement learning algorithmsQ-learning and deep Q-learning (DQN) are used...
The combination of Deep Learning and Reinforcement Learning, termed Deep Reinforcement Learning Netw...
The deep learning community has greatly progressed towards integrating deep neural nets with reinfor...
Reinforcement learning can be compared to howhumans learn – by interaction, which is the fundamental...
This paper presents a modification of the deep Q-network (DQN) in deep reinforcement learning to con...
Neural network simulation is an important tool for generating and evaluating hypotheses on the struc...
Humans possess an exceptional aptitude to efficiently make decisions from high-dimensional sensory o...
The aim of this thesis is to use deep neural networks for task in reinforcement learning. I use my m...
This paper proposes a neural network based reinforcement learning controller that is able to learn c...
Neural networks allow Q-learning reinforcement learning agents such as deep Q-networks (DQN) to appr...
Deep Q-learning Network (DQN) is a successful way which combines reinforcement learning with deep ne...
In this article, we address two key challenges in deep reinforcement learning (DRL) setting, sample ...