Feature selection (FS) represents an optimization problem that aims to simplify and improve the quality of highly dimensional datasets through selecting prominent features and …
In the recent decades, researchers have introduced an abundance of feature selection methods many of which are studied and analyzed over the high dimensional datasets …
This paper presents modified versions of a recent swarm intelligence algorithm called Harris hawks optimization (HHO) via incorporating genetic operators (crossover and mutation CM) …
In this paper, we propose a generalized wrapper-based feature selection, called GeFeS, which is based on a parallel new intelligent genetic algorithm (GA). The proposed GeFeS …
M Bogaert, L Delaere - Mathematics, 2023 - mdpi.com
In the past several single classifiers, homogeneous and heterogeneous ensembles have been proposed to detect the customers who are most likely to churn. Despite the popularity …
R Zhou, Y Zhang, K He - Expert Systems with Applications, 2023 - Elsevier
High dimensionality is one of the main challenges in Quantitative Structure-Activity Relationship (QSAR) classification modeling, and feature selection as an effective …
The microarrays permit experts to monitor the gene profiling for thousands of genes across an array of cellular responses, phenotype, and circumstances. Selecting a tiny subset of …
In recent years, medical data analysis has become paramount in delivering accurate diagnoses for various diseases. The plethora of medical data sources, encompassing …
DNA microarray data is expected to be a great help in the development of efficient diagnosis and tumor classification. However, due to the small number of instances compared to a large …