A survey on evolutionary computation approaches to feature selection

B Xue, M Zhang, WN Browne… - IEEE Transactions on …, 2015 - ieeexplore.ieee.org
Feature selection is an important task in data mining and machine learning to reduce the
dimensionality of the data and increase the performance of an algorithm, such as a …

Particle swarm optimization for feature selection: A review of filter-based classification to identify challenges and opportunities

M Cherrington, D Airehrour, J Lu… - 2019 IEEE 10th …, 2019 - ieeexplore.ieee.org
Feature selection (FS) is a fundamental big data task, improving classification performance
by selecting a relevant feature subset to mitigate thecurse of dimensionality'. As the number …

Dynamic modeling of multifactor construction productivity for equipment-intensive activities

N Gerami Seresht, AR Fayek - Journal of Construction Engineering …, 2018 - ascelibrary.org
Construction productivity is a major research interest within the construction domain.
Because construction is a labor-intensive industry, previous research has often focused on …

A comprehensive comparison on evolutionary feature selection approaches to classification

B Xue, M Zhang, WN Browne - International Journal of …, 2015 - World Scientific
Feature selection is an important data preprocessing step in machine learning and data
mining, such as classification tasks. Research on feature selection has been extensively …

Neuro-fuzzy system dynamics technique for modeling construction systems

NG Seresht, AR Fayek - Applied Soft Computing, 2020 - Elsevier
The performance of construction systems (eg, activities, operations, projects) is commonly
measured using different indicators, such as productivity or production rate. The accurate …

Simultaneous feature and instance selection in big noisy data using memetic variable neighborhood search

CC Lin, JR Kang, YL Liang, CC Kuo - Applied Soft Computing, 2021 - Elsevier
In smart factories, the data collected by Internet-of-things sensors is enormous and includes
a lot of noise and missing values. To address this big data problem, metaheuristic is one of …

Covering assisted intuitionistic fuzzy bi-selection technique for data reduction and its applications

R Saini, AK Tiwari, A Nath, P Singh, SP Maurya… - Scientific Reports, 2024 - nature.com
The dimension and size of data is growing rapidly with the extensive applications of
computer science and lab based engineering in daily life. Due to availability of vagueness …

[PDF][PDF] Knowledge management overview of feature selection problem in high-dimensional financial data: Cooperative co-evolution and MapReduce perspectives

A Rashid, T Choudhury - Probl. Perspect. Manag, 2019 - core.ac.uk
The term “big data” characterizes the massive amounts of data generation by the advanced
technologies in different domains using 4Vs–volume, velocity, variety, and veracity-to …

SI (FS) 2: Fast simultaneous instance and feature selection for datasets with many features

N Garcia-Pedrajas, JAR del Castillo… - Pattern Recognition, 2021 - Elsevier
Data reduction is becoming increasingly relevant due to the enormous amounts of data that
are constantly being produced in many fields of research. Instance selection is one of the …

Modeling earthmoving operations in real time using hybrid fuzzy simulation

N Gerami Seresht, AR Fayek - Canadian Journal of Civil …, 2022 - cdnsciencepub.com
Predicting and optimizing performance in earthmoving operations is critical, because they
are essential to many construction projects. The complexity of modeling earthmoving …