In this research a genetic fuzzy system (GFS) is proposed that performs discretization parameter learning in the context of the Fuzzy Inductive Reasoning (FIR) methodology and the Linguistic Rule FIR (LR-FIR) algorithm. The main goal of the GFS is to take advantage of the potentialities of GAs to learn the fuzzification parameters of the FIR and LR-FIR approaches in order to obtain reliable and useful predictive (FIR) models and decision support (LR-FIR) models. The GFS is evaluated in an e-learning context
In generating a suitable fuzzy classifier system, significant effort is often placed on the determin...
In generating a suitable fuzzy classifier system, significant effort is often placed on the determin...
This thesis presents data-driven methods to learn interpretable and accurate fuzzy models (FMs) for ...
In this paper, we present a multi-stage genetic learning process for obtaining linguistic Fuzzy Rule...
Adaptive genetic fuzzy systems are ability to solve different kinds of problems in various applicati...
AbstractThis paper presents a genetic algorithm (GA) that automatically constructs the knowledge bas...
Modelling is an essential step towards a solution to complex system problems. Traditional mathematic...
Modelling is an essential step towards a solution to complex system problems. Traditional mathematic...
AbstractThe need for trading off interpretability and accuracy is intrinsic to the use of fuzzy syst...
A wrapper-type evolutionary feature selection algorithm, able to use fuzzy data, is proposed. In the...
: This paper proposes two different approaches to apply Genetic Algorithms to Fuzzy Logic Controller...
Abstract—In many real problems the regression models have to be accurate but, also, interpretable in...
A methodology for the encoding of the chromosome of a genetic algorithm (GA) is described in the pap...
It has been recognized in various studies that the variations in the granularity (number of classes ...
It has been recognized in various studies that the variations in the granularity (number of classes ...
In generating a suitable fuzzy classifier system, significant effort is often placed on the determin...
In generating a suitable fuzzy classifier system, significant effort is often placed on the determin...
This thesis presents data-driven methods to learn interpretable and accurate fuzzy models (FMs) for ...
In this paper, we present a multi-stage genetic learning process for obtaining linguistic Fuzzy Rule...
Adaptive genetic fuzzy systems are ability to solve different kinds of problems in various applicati...
AbstractThis paper presents a genetic algorithm (GA) that automatically constructs the knowledge bas...
Modelling is an essential step towards a solution to complex system problems. Traditional mathematic...
Modelling is an essential step towards a solution to complex system problems. Traditional mathematic...
AbstractThe need for trading off interpretability and accuracy is intrinsic to the use of fuzzy syst...
A wrapper-type evolutionary feature selection algorithm, able to use fuzzy data, is proposed. In the...
: This paper proposes two different approaches to apply Genetic Algorithms to Fuzzy Logic Controller...
Abstract—In many real problems the regression models have to be accurate but, also, interpretable in...
A methodology for the encoding of the chromosome of a genetic algorithm (GA) is described in the pap...
It has been recognized in various studies that the variations in the granularity (number of classes ...
It has been recognized in various studies that the variations in the granularity (number of classes ...
In generating a suitable fuzzy classifier system, significant effort is often placed on the determin...
In generating a suitable fuzzy classifier system, significant effort is often placed on the determin...
This thesis presents data-driven methods to learn interpretable and accurate fuzzy models (FMs) for ...