In the classification of cancer data sets, we note that they contain a number of additional features that influence the classification accuracy. There are many evolutionary algorithms that are used to define the feature and reduce dimensional patterns such as the gray wolf algorithm (GWO) after converting it from a continuous space to a discrete space. In this paper, a method of feature selection was proposed through two consecutive stages in the first stage, the fuzzy mutual information (FMI) technique is used to determine the most important feature selection of diseases dataset through a fuzzy model that was built based on the data size. In the second stage, the binary gray wolf optimization (BGWO) algorithm is used to determine a specifi...
In the area of bioinformatics, the identification of gene subsets responsible for classifying availa...
Cancer kills millions of people worldwide each year. It is a growing problem and is the foremost cau...
Extracting knowledge and patterns for the diagnosis and treatment of disease from the medical databa...
Genetic datasets have a large number of features that may significantly affect the disease classific...
Cancer is one of the deadly diseases of human life. The patient may likely to survive if the disease...
The advancements in intelligent systems have contributed tremendously to the fields of bioinformatic...
Background: Gene expression data are characteristically high dimensional with a small sample size in...
Feature Selection is the process of selecting a subset of relevant features (i.e. predictors) for u...
AbstractEstablishing a classification model for cancer recognition based on DNA microarrays is usefu...
This study describes a novel approach to reducing the challenges of highly nonlinear multiclass gene...
[[abstract]]Feature selection aims at finding the most relevant features of a problem domain. It is ...
The classification of the cancer tumors based on gene expression profiles has been extensively studi...
Introduction: Cancer is a major cause of mortality in the modern world, and one of the most importan...
Feature selection (FS) is a pre-processing step that aims to eliminate the redundant and less-inform...
In recent years, metaheuristic methods have shown major advantages in the field of feature selection...
In the area of bioinformatics, the identification of gene subsets responsible for classifying availa...
Cancer kills millions of people worldwide each year. It is a growing problem and is the foremost cau...
Extracting knowledge and patterns for the diagnosis and treatment of disease from the medical databa...
Genetic datasets have a large number of features that may significantly affect the disease classific...
Cancer is one of the deadly diseases of human life. The patient may likely to survive if the disease...
The advancements in intelligent systems have contributed tremendously to the fields of bioinformatic...
Background: Gene expression data are characteristically high dimensional with a small sample size in...
Feature Selection is the process of selecting a subset of relevant features (i.e. predictors) for u...
AbstractEstablishing a classification model for cancer recognition based on DNA microarrays is usefu...
This study describes a novel approach to reducing the challenges of highly nonlinear multiclass gene...
[[abstract]]Feature selection aims at finding the most relevant features of a problem domain. It is ...
The classification of the cancer tumors based on gene expression profiles has been extensively studi...
Introduction: Cancer is a major cause of mortality in the modern world, and one of the most importan...
Feature selection (FS) is a pre-processing step that aims to eliminate the redundant and less-inform...
In recent years, metaheuristic methods have shown major advantages in the field of feature selection...
In the area of bioinformatics, the identification of gene subsets responsible for classifying availa...
Cancer kills millions of people worldwide each year. It is a growing problem and is the foremost cau...
Extracting knowledge and patterns for the diagnosis and treatment of disease from the medical databa...