In this study, a new predictive framework is proposed by integrating an improved grey wolf optimization (IGWO) and kernel extreme learning machine (KELM), termed as IGWO-KELM, for medical diagnosis. The proposed IGWO feature selection approach is used for the purpose of finding the optimal feature subset for medical data. In the proposed approach, genetic algorithm (GA) was firstly adopted to generate the diversified initial positions, and then grey wolf optimization (GWO) was used to update the current positions of population in the discrete searching space, thus getting the optimal feature subset for the better classification purpose based on KELM. The proposed approach is compared against the original GA and GWO on the two common disease...
Big data development in biomedical and medical service networks provides a research on medical data ...
Medical data classification is a prime data mining problem being discussed about for a decade that h...
In recent years, metaheuristic methods have shown major advantages in the field of feature selection...
High dimensional data classification becomes challenging task because data are large, complex to han...
Grey wolf optimization (GWO) is a recent and popular swarm-based metaheuristic approach. It has been...
Grey wolf optimization (GWO) is a recent and popular swarm-based metaheuristic approach. It has been...
Feature selection (FS) is a pre-processing step that aims to eliminate the redundant and less-inform...
Abstract- Medical datasets inevitably suffer from redundant and irrelevant attributes, which reduce ...
Artificial intelligence is a spectacular part of computer engineering that has earned a compelling d...
Part 1: Machine LearningInternational audienceFeature selection is an important part of data mining,...
This paper proposes improvements to the binary grey-wolf optimizer (BGWO) to solve the feature selec...
The volume of data in the medical domain has been on the rise with improved and accessible technolog...
In order to develop a new and effective prediction system, the full potential of support vector mach...
Abstract Feature selection is a fundamental pre‐processing step in machine learning that aims to red...
This paper proposes a competitive grey wolf optimizer (CGWO) to solve the feature selection problem ...
Big data development in biomedical and medical service networks provides a research on medical data ...
Medical data classification is a prime data mining problem being discussed about for a decade that h...
In recent years, metaheuristic methods have shown major advantages in the field of feature selection...
High dimensional data classification becomes challenging task because data are large, complex to han...
Grey wolf optimization (GWO) is a recent and popular swarm-based metaheuristic approach. It has been...
Grey wolf optimization (GWO) is a recent and popular swarm-based metaheuristic approach. It has been...
Feature selection (FS) is a pre-processing step that aims to eliminate the redundant and less-inform...
Abstract- Medical datasets inevitably suffer from redundant and irrelevant attributes, which reduce ...
Artificial intelligence is a spectacular part of computer engineering that has earned a compelling d...
Part 1: Machine LearningInternational audienceFeature selection is an important part of data mining,...
This paper proposes improvements to the binary grey-wolf optimizer (BGWO) to solve the feature selec...
The volume of data in the medical domain has been on the rise with improved and accessible technolog...
In order to develop a new and effective prediction system, the full potential of support vector mach...
Abstract Feature selection is a fundamental pre‐processing step in machine learning that aims to red...
This paper proposes a competitive grey wolf optimizer (CGWO) to solve the feature selection problem ...
Big data development in biomedical and medical service networks provides a research on medical data ...
Medical data classification is a prime data mining problem being discussed about for a decade that h...
In recent years, metaheuristic methods have shown major advantages in the field of feature selection...