Introduction: In pattern recognition and data mining, feature selection is one of the most crucial tasks. To increase the efficacy of classification algorithms, it is necessary to identify the most relevant subset of features in a given domain. This means that the feature selection challenge can be seen as an optimization problem, and thus meta-heuristic techniques can be utilized to find a solution. Methodology: In this work, we propose a novel hybrid binary meta-heuristic algorithm to solve the feature selection problem by combining two algorithms: Dipper Throated Optimization (DTO) and Sine Cosine (SC) algorithm. The new algorithm is referred to as bSCWDTO. We employed the sine cosine algorithm to improve the exploration process and ensu...
Feature selection aims to reduce the dimensionality of a dataset by removing superfluous attributes....
Recent research has shown that Particle Swarm Optimisation is a promising approach to feature select...
Feature selection aims to reduce the dimensionality of a dataset by removing superfluous attributes....
Recent trend of research is to hybridize two and more metaheuristics algorithms to obtain superior s...
Selection of features is an effective method for minimizing the amount of data features in order to ...
Selection of features is an effective method for minimizing the amount of data features in order to ...
Feature selection is a task of choosing the best combination of potential features that best describ...
The recent advancements in science, engineering, and technology have facilitated huge generation of ...
When solving many machine learning problems such as classification, there exists a large number of i...
In the last decade, data generated from different digital devices has posed a remarkable challenge f...
Feature selection is a task of choosing the best combination of potential features that best describ...
Computing advances in data storage are leading to rapid growth in large-scale datasets. Using all fe...
Feature selection (FS) is a technique which helps to find the most optimal feature subset to develop...
Forming an efficient feature space for classification problems is a grand challenge in pattern recog...
Machine learning has been expansively examined with data classification as the most popularly resear...
Feature selection aims to reduce the dimensionality of a dataset by removing superfluous attributes....
Recent research has shown that Particle Swarm Optimisation is a promising approach to feature select...
Feature selection aims to reduce the dimensionality of a dataset by removing superfluous attributes....
Recent trend of research is to hybridize two and more metaheuristics algorithms to obtain superior s...
Selection of features is an effective method for minimizing the amount of data features in order to ...
Selection of features is an effective method for minimizing the amount of data features in order to ...
Feature selection is a task of choosing the best combination of potential features that best describ...
The recent advancements in science, engineering, and technology have facilitated huge generation of ...
When solving many machine learning problems such as classification, there exists a large number of i...
In the last decade, data generated from different digital devices has posed a remarkable challenge f...
Feature selection is a task of choosing the best combination of potential features that best describ...
Computing advances in data storage are leading to rapid growth in large-scale datasets. Using all fe...
Feature selection (FS) is a technique which helps to find the most optimal feature subset to develop...
Forming an efficient feature space for classification problems is a grand challenge in pattern recog...
Machine learning has been expansively examined with data classification as the most popularly resear...
Feature selection aims to reduce the dimensionality of a dataset by removing superfluous attributes....
Recent research has shown that Particle Swarm Optimisation is a promising approach to feature select...
Feature selection aims to reduce the dimensionality of a dataset by removing superfluous attributes....