Maze problems represent a simplified virtual model of the real environment and can be used for developing core algorithms of many real-world application related to the problem of navigation. Learning Classifier Systems (LCS) are the most widely used class of algorithms for reinforcement learning in mazes. However, LCSs best achievements in maze problems are still mostly bounded to non-aliasing environments, while LCS complexity seems to obstruct a proper analysis of the reasons for failure. Moreover, there is a lack of knowledge of what makes a maze problem hard to solve by a learning agent. To overcome this restriction we try to improve our understanding of the nature and structure of maze environments. In this paper we describe a new LCS ...
Goal-finding in an unknown maze is a challenging problem for a Reinforcement Learning agent, because...
This paper describes how a world model for successive recognition can be learned using associative l...
This paper presents an approach to problem solving through imitation. It introduces the Statistical ...
Learning classifier systems (LCSs) belong to a class of algorithms based on the principle of self-or...
One of the most perspective ideas of further development of Reinforcement Learning (RL) research inv...
Learning classifier systems belong to the class of algorithms based on the principle of self-organiz...
Perceptual aliasing challenges reinforcement learning agents. They struggle to learn stable policies...
AbstractThis paper improves a classifier system, ACS (Anticipatory Classifier System). The suggested...
The automated design of the controller of software agents embedded in an environ-ment is an importan...
The ability to use a 2D map to navigate a complex 3D environment is quite remarkable, and even diffi...
<p>A: The maze consists of a square enclosure, with a circular goal area (green) in the center. A U-...
In this paper we present a general, flexible framework for learning mappings from images to actions ...
In this paper, we propose an unsupervised neural network allowing a robot to learn sensory-motor ass...
It is known that Perceptual Aliasing may significantly diminish the effectiveness of reinforcement l...
A maze is a grid-like two-dimensional area of any size, usually rectangular. A maze consists of cell...
Goal-finding in an unknown maze is a challenging problem for a Reinforcement Learning agent, because...
This paper describes how a world model for successive recognition can be learned using associative l...
This paper presents an approach to problem solving through imitation. It introduces the Statistical ...
Learning classifier systems (LCSs) belong to a class of algorithms based on the principle of self-or...
One of the most perspective ideas of further development of Reinforcement Learning (RL) research inv...
Learning classifier systems belong to the class of algorithms based on the principle of self-organiz...
Perceptual aliasing challenges reinforcement learning agents. They struggle to learn stable policies...
AbstractThis paper improves a classifier system, ACS (Anticipatory Classifier System). The suggested...
The automated design of the controller of software agents embedded in an environ-ment is an importan...
The ability to use a 2D map to navigate a complex 3D environment is quite remarkable, and even diffi...
<p>A: The maze consists of a square enclosure, with a circular goal area (green) in the center. A U-...
In this paper we present a general, flexible framework for learning mappings from images to actions ...
In this paper, we propose an unsupervised neural network allowing a robot to learn sensory-motor ass...
It is known that Perceptual Aliasing may significantly diminish the effectiveness of reinforcement l...
A maze is a grid-like two-dimensional area of any size, usually rectangular. A maze consists of cell...
Goal-finding in an unknown maze is a challenging problem for a Reinforcement Learning agent, because...
This paper describes how a world model for successive recognition can be learned using associative l...
This paper presents an approach to problem solving through imitation. It introduces the Statistical ...