Supervised, unsupervised, and semi-supervised feature selection: a review on gene selection
JC Ang, A Mirzal, H Haron… - IEEE/ACM transactions …, 2015 - ieeexplore.ieee.org
Recently, feature selection and dimensionality reduction have become fundamental tools for
many data mining tasks, especially for processing high-dimensional data such as gene …
many data mining tasks, especially for processing high-dimensional data such as gene …
A review of microarray datasets and applied feature selection methods
V Bolón-Canedo, N Sánchez-Marono… - Information …, 2014 - Elsevier
Microarray data classification is a difficult challenge for machine learning researchers due to
its high number of features and the small sample sizes. Feature selection has been soon …
its high number of features and the small sample sizes. Feature selection has been soon …
From explanations to feature selection: assessing SHAP values as feature selection mechanism
WE Marcílio, DM Eler - 2020 33rd SIBGRAPI conference on …, 2020 - ieeexplore.ieee.org
Explainability has become one of the most discussed topics in machine learning research in
recent years, and although a lot of methodologies that try to provide explanations to black …
recent years, and although a lot of methodologies that try to provide explanations to black …
A survey on feature selection methods
G Chandrashekar, F Sahin - Computers & electrical engineering, 2014 - Elsevier
Plenty of feature selection methods are available in literature due to the availability of data
with hundreds of variables leading to data with very high dimension. Feature selection …
with hundreds of variables leading to data with very high dimension. Feature selection …
Feature selection and analysis on correlated gas sensor data with recursive feature elimination
Support vector machine recursive feature elimination (SVM-RFE) is a powerful feature
selection algorithm. However, when the candidate feature set contains highly correlated …
selection algorithm. However, when the candidate feature set contains highly correlated …
An evaluation of feature selection methods for environmental data
D Effrosynidis, A Arampatzis - Ecological Informatics, 2021 - Elsevier
We present a comprehensive experimental study of 12 individual as well as 6 ensemble
methods for feature selection for classification tasks on environmental data, more specifically …
methods for feature selection for classification tasks on environmental data, more specifically …
Identify origin of replication in Saccharomyces cerevisiae using two-step feature selection technique
Motivation DNA replication is a key step to maintain the continuity of genetic information
between parental generation and offspring. The initiation site of DNA replication, also called …
between parental generation and offspring. The initiation site of DNA replication, also called …
Autocorrelation aided random forest classifier-based bearing fault detection framework
Rolling bearing defects in induction motors are usually diagnosed using vibration signal
analysis. For accurate detection of rolling bearing defects, appropriate feature extraction …
analysis. For accurate detection of rolling bearing defects, appropriate feature extraction …
A hybrid feature selection method based on Binary Jaya algorithm for micro-array data classification
A Chaudhuri, TP Sahu - Computers & Electrical Engineering, 2021 - Elsevier
Micro-array technology generates high-dimensional data. The high dimensionality of data
hampers the learning capability of machine learning algorithms. Dimensionality can be …
hampers the learning capability of machine learning algorithms. Dimensionality can be …
[HTML][HTML] Hybrid-recursive feature elimination for efficient feature selection
H Jeon, S Oh - Applied Sciences, 2020 - mdpi.com
As datasets continue to increase in size, it is important to select the optimal feature subset
from the original dataset to obtain the best performance in machine learning tasks. Highly …
from the original dataset to obtain the best performance in machine learning tasks. Highly …