While using automated learning methods, the lack of accuracy and poor knowledge generalization are both typical problems for a rule-based system obtained on a given data set. This paper introduces a new method capable of generating an accurate rule-based fuzzy inference system with parameterized consequences using an automated, off-line learning process based on multi-phase evolutionary computing and a training data covering algorithm. The presented method consists of the following steps: obtaining an initial set of rules with parameterized consequences using the Michigan approach combined with an evolutionary strategy and a covering algorithm for the training data set; reducing the obtained rule base using a simple genetic algorithm; multi...
Nowadays, the growing amounts of collected data enable the training of machine learning models that ...
In this research a genetic fuzzy system (GFS) is proposed that performs discretization parameter lea...
During the last years, multi-objective evolutionary algorithms (MOEAs) have been extensively used to...
This paper presents a framework for studying the effectiveness of evolutionary strategies for genera...
This paper illustrated an evolutionary algorithm which learns classifiers, represented as sets of f...
Fuzzy rule bases have proven to be an effective tool for modeling complex systems and approximating ...
Several methods have been proposed to automatically generate fuzzy rule-based systems (FRBSs) from d...
One of the crucial problems of fuzzy rule modeling is how to find an optimal or at least a quasi-opt...
In this paper, we propose the use of a multiobjective evolutionary approach to generate a set of lin...
AbstractThe need for trading off interpretability and accuracy is intrinsic to the use of fuzzy syst...
Recent work combining population based heuristics and flexible models such as fuzzy rules, neural ne...
Fuzzy rule bases provide a tool for modeling complex systems and approximating functions. Originally...
This paper presents a new approach to acquisition of comprehensible fuzzy rules for fuzzy modeling f...
Abstract — In this paper, we introduce a new evolutionary methodology to design fuzzy inference syst...
Nowadays, the growing amounts of collected data enable the training of machine learning models that ...
In this research a genetic fuzzy system (GFS) is proposed that performs discretization parameter lea...
During the last years, multi-objective evolutionary algorithms (MOEAs) have been extensively used to...
This paper presents a framework for studying the effectiveness of evolutionary strategies for genera...
This paper illustrated an evolutionary algorithm which learns classifiers, represented as sets of f...
Fuzzy rule bases have proven to be an effective tool for modeling complex systems and approximating ...
Several methods have been proposed to automatically generate fuzzy rule-based systems (FRBSs) from d...
One of the crucial problems of fuzzy rule modeling is how to find an optimal or at least a quasi-opt...
In this paper, we propose the use of a multiobjective evolutionary approach to generate a set of lin...
AbstractThe need for trading off interpretability and accuracy is intrinsic to the use of fuzzy syst...
Recent work combining population based heuristics and flexible models such as fuzzy rules, neural ne...
Fuzzy rule bases provide a tool for modeling complex systems and approximating functions. Originally...
This paper presents a new approach to acquisition of comprehensible fuzzy rules for fuzzy modeling f...
Abstract — In this paper, we introduce a new evolutionary methodology to design fuzzy inference syst...
Nowadays, the growing amounts of collected data enable the training of machine learning models that ...
In this research a genetic fuzzy system (GFS) is proposed that performs discretization parameter lea...
During the last years, multi-objective evolutionary algorithms (MOEAs) have been extensively used to...