Abstract—For many classification or controlling problems a set of training data is available. To make best use of this training data it would be ideal to feed the data into a learning algorithm, which then outputs a finished, trained fuzzy controller, that is able to classify or control the original system. For the FUZZ-IEEE 2012 a competition was proposed to predict future volumes sold per day in a certain gas station. The training data includes a collection of gas prices at the current and the competitor’s gas station and the according volume sold on every consecutive day in a period of about one year. This training data was analyzed and fit to a fuzzy learning algorithm based on the Münsteraner Optimisation System. As a base point a mea...
We present an experimental comparison between two approaches to optimization of the rules for a fuzz...
In order to understand what fuzzy systems have to offer the control community, it is important to st...
This paper presents a new learning algorithm for the design of Mamdani-type or fully-linguistic fuzz...
A neurofuzzy approach for a given set of input-output training data is proposed in two phases. First...
This report describes the fuzzy classifier system and a new payoff distribution scheme that performs...
[[abstract]]A new learning methodology is presented to find the time optimal controller for an unkno...
This paper will compare and contrast two apparently different approaches for representing linguistic...
We present a class of Learning Classifier Systems that learn fuzzy rule-based models, instead of int...
The goal of this work is to propose a learning procedure for fuzzy systems. Fuzzy systems are able t...
Fuzzy inference systems and neural networks both provide mathematical systems for approximating cont...
The fuzzy classifier system (FCS) combines the ideas of fuzzy logic controllers (FLC's) and learning...
This paper illustrated an evolutionary algorithm which learns classifiers, represented as sets of f...
: The design and optimization process of fuzzy controllers can be supported by learning techniques d...
Due to the rapid technological evolution and communications accessibility, data generated from diffe...
This paper proposes a fuzzy system ensemble (FSE) that can improve the system performance in non-lin...
We present an experimental comparison between two approaches to optimization of the rules for a fuzz...
In order to understand what fuzzy systems have to offer the control community, it is important to st...
This paper presents a new learning algorithm for the design of Mamdani-type or fully-linguistic fuzz...
A neurofuzzy approach for a given set of input-output training data is proposed in two phases. First...
This report describes the fuzzy classifier system and a new payoff distribution scheme that performs...
[[abstract]]A new learning methodology is presented to find the time optimal controller for an unkno...
This paper will compare and contrast two apparently different approaches for representing linguistic...
We present a class of Learning Classifier Systems that learn fuzzy rule-based models, instead of int...
The goal of this work is to propose a learning procedure for fuzzy systems. Fuzzy systems are able t...
Fuzzy inference systems and neural networks both provide mathematical systems for approximating cont...
The fuzzy classifier system (FCS) combines the ideas of fuzzy logic controllers (FLC's) and learning...
This paper illustrated an evolutionary algorithm which learns classifiers, represented as sets of f...
: The design and optimization process of fuzzy controllers can be supported by learning techniques d...
Due to the rapid technological evolution and communications accessibility, data generated from diffe...
This paper proposes a fuzzy system ensemble (FSE) that can improve the system performance in non-lin...
We present an experimental comparison between two approaches to optimization of the rules for a fuzz...
In order to understand what fuzzy systems have to offer the control community, it is important to st...
This paper presents a new learning algorithm for the design of Mamdani-type or fully-linguistic fuzz...