We discuss some issues concerning the application of learning classifier systems to real-valued applications. In particular, we focus on the possibility of classifying data by crisp and fuzzy intervals, showing the effect of their granularity on the learning performance. We introduce the concept of sensorial cluster and we discuss the difference between cluster aliasing and perceptual aliasing. We show the impact of different choices on the performance of both crisp and fuzzy learning classifier systems applied to a mobile, autonomous, robotic agent
This report describes the fuzzy classifier system and a new payoff distribution scheme that performs...
The issue of rule generalization has received a great deal of attention in the discrete-valued learn...
Approximation theory based on fuzzy sets provides a tool for modeling complex systems for which only...
We discuss some issues concerning the application of learning classifier systems to real-valued appl...
We present a class of Learning Classifier Systems that learn fuzzy rule-based models, instead of int...
Fuzzy Classifier Systems (FCS) implement a mapping from real numbers to real numbers, through fuzzy ...
We present an experimental comparison between two approaches to optimization of the rules for a fuzz...
We investigate Learning Classifier Systems for online environments that consist of real-valued stat...
We propose an approach to ground the design of learning systems on the analysis of the configuration...
We investigate Learning Classifier Systems for online environments that consist of real-valued state...
This paper presents a learning approach to fuzzy classifier systems. Q-learning algorithm is employe...
We present some results of our research in the field of Machine Learning applied to robotics problem...
Maze problems represent a simplified virtual model of the real environment and can be used for devel...
Classes of real world datasets have various properties (such as imbalance, size, complexity, and cla...
This report describes the fuzzy classifier system and a new payoff distribution scheme that performs...
The issue of rule generalization has received a great deal of attention in the discrete-valued learn...
Approximation theory based on fuzzy sets provides a tool for modeling complex systems for which only...
We discuss some issues concerning the application of learning classifier systems to real-valued appl...
We present a class of Learning Classifier Systems that learn fuzzy rule-based models, instead of int...
Fuzzy Classifier Systems (FCS) implement a mapping from real numbers to real numbers, through fuzzy ...
We present an experimental comparison between two approaches to optimization of the rules for a fuzz...
We investigate Learning Classifier Systems for online environments that consist of real-valued stat...
We propose an approach to ground the design of learning systems on the analysis of the configuration...
We investigate Learning Classifier Systems for online environments that consist of real-valued state...
This paper presents a learning approach to fuzzy classifier systems. Q-learning algorithm is employe...
We present some results of our research in the field of Machine Learning applied to robotics problem...
Maze problems represent a simplified virtual model of the real environment and can be used for devel...
Classes of real world datasets have various properties (such as imbalance, size, complexity, and cla...
This report describes the fuzzy classifier system and a new payoff distribution scheme that performs...
The issue of rule generalization has received a great deal of attention in the discrete-valued learn...
Approximation theory based on fuzzy sets provides a tool for modeling complex systems for which only...