While reinforcement learning (RL) from raw images has been largely investigated in the last decade, existing approaches still suffer from a number of constraints. The high input dimension is often handled using either expert knowledge to extract handcrafted features or environment encoding through convolutional networks. Both solutions require numerous parameters to be optimized. In contrast, we propose a generic method to extract sparse features from raw images with few trainable parameters. We achieved this using a Radial Basis Function Network (RBFN) directly on raw image. We evaluate the performance of the proposed approach for visual extraction in Q-learning tasks in the Vizdoom environment. Then, we compare our results with two Deep Q...
We study a classification problem where each feature can be acquired for a cost and the goal is to o...
In this work, a Nadaraya-Watson kernel based learning system which owns general regression neural ne...
Radial basis function neural networks (RBFs) are prime candidates for pattern classification and reg...
International audienceDeep reinforcement learning policies, despite their outstanding efficiency in ...
There has been success in recent years for neural networks in applications requiring high level inte...
The combination of Deep Learning and Reinforcement Learning, termed Deep Reinforcement Learning Netw...
Deep reinforcement learning techniques have demonstrated superior performance in a wide variety of e...
In this article, we address two key challenges in deep reinforcement learning (DRL) setting, sample ...
This thesis investigates how general the knowledge stored in deep-Q-networks are. This general knowl...
Neural networks allow Q-learning reinforcement learning agents such as deep Q-networks (DQN) to appr...
This paper tackles a new problem setting: reinforcement learning with pixel-wise rewards (pixelRL) f...
Recent advances in reinforcement learning enable computers to learn human level polices for Atari 26...
Much of the recent successes in Deep Reinforcement Learning have been based on minimizing the square...
AbstractImages contain three primary colors at each pixel, but single sensor digital cameras capture...
This paper presents experiments using Radial Basis Function (RBF) networks to tackle the unconstrain...
We study a classification problem where each feature can be acquired for a cost and the goal is to o...
In this work, a Nadaraya-Watson kernel based learning system which owns general regression neural ne...
Radial basis function neural networks (RBFs) are prime candidates for pattern classification and reg...
International audienceDeep reinforcement learning policies, despite their outstanding efficiency in ...
There has been success in recent years for neural networks in applications requiring high level inte...
The combination of Deep Learning and Reinforcement Learning, termed Deep Reinforcement Learning Netw...
Deep reinforcement learning techniques have demonstrated superior performance in a wide variety of e...
In this article, we address two key challenges in deep reinforcement learning (DRL) setting, sample ...
This thesis investigates how general the knowledge stored in deep-Q-networks are. This general knowl...
Neural networks allow Q-learning reinforcement learning agents such as deep Q-networks (DQN) to appr...
This paper tackles a new problem setting: reinforcement learning with pixel-wise rewards (pixelRL) f...
Recent advances in reinforcement learning enable computers to learn human level polices for Atari 26...
Much of the recent successes in Deep Reinforcement Learning have been based on minimizing the square...
AbstractImages contain three primary colors at each pixel, but single sensor digital cameras capture...
This paper presents experiments using Radial Basis Function (RBF) networks to tackle the unconstrain...
We study a classification problem where each feature can be acquired for a cost and the goal is to o...
In this work, a Nadaraya-Watson kernel based learning system which owns general regression neural ne...
Radial basis function neural networks (RBFs) are prime candidates for pattern classification and reg...