Metaheuristics for bilevel optimization: A comprehensive review

JF Camacho-Vallejo, C Corpus, JG Villegas - Computers & Operations …, 2024 - Elsevier
A bilevel programming model represents the relationship in a specific decision process that
involves decisions within a hierarchical structure of two levels. The upper-level problem is …

Survey of optimization algorithms in modern neural networks

R Abdulkadirov, P Lyakhov, N Nagornov - Mathematics, 2023 - mdpi.com
The main goal of machine learning is the creation of self-learning algorithms in many areas
of human activity. It allows a replacement of a person with artificial intelligence in seeking to …

A modified Adam algorithm for deep neural network optimization

M Reyad, AM Sarhan, M Arafa - Neural Computing and Applications, 2023 - Springer
Abstract Deep Neural Networks (DNNs) are widely regarded as the most effective learning
tool for dealing with large datasets, and they have been successfully used in thousands of …

Unsupervised deep learning based variational autoencoder model for COVID-19 diagnosis and classification

RF Mansour, J Escorcia-Gutierrez, M Gamarra… - Pattern Recognition …, 2021 - Elsevier
At present times, COVID-19 has become a global illness and infected people has increased
exponentially and it is difficult to control due to the non-availability of large quantity of testing …

One-dimensional VGGNet for high-dimensional data

S Feng, L Zhao, H Shi, M Wang, S Shen, W Wang - Applied Soft Computing, 2023 - Elsevier
We consider a deep learning model for classifying high-dimensional data and seek to
achieve optimal evaluation accuracy and robustness based on multicriteria decision-making …

Particle swarm optimization for compact neural architecture search for image classification

J Huang, B Xue, Y Sun, M Zhang… - IEEE Transactions on …, 2022 - ieeexplore.ieee.org
Convolutional neural networks (CNNs) are a superb computing paradigm in deep learning,
and their architectures are considered to be the key to performance breakthroughs in …

Eight years of AutoML: categorisation, review and trends

R Barbudo, S Ventura, JR Romero - Knowledge and Information Systems, 2023 - Springer
Abstract Knowledge extraction through machine learning techniques has been successfully
applied in a large number of application domains. However, apart from the required …

Novel deterministic and probabilistic forecasting methods for crude oil price employing optimized deep learning, statistical and hybrid models

SK Purohit, S Panigrahi - Information Sciences, 2024 - Elsevier
In this paper, individual and hybrid methods are proposed employing optimized statistical
and deep learning (DL) models for deterministic (point) and probabilistic (interval) …

Exploring the advancements and future research directions of artificial neural networks: a text mining approach

E Kariri, H Louati, A Louati, F Masmoudi - Applied Sciences, 2023 - mdpi.com
Artificial Neural Networks (ANNs) are machine learning algorithms inspired by the structure
and function of the human brain. Their popularity has increased in recent years due to their …

Price forecasting for real estate using machine learning: A case study on Riyadh city

A Louati, R Lahyani, A Aldaej… - Concurrency and …, 2022 - Wiley Online Library
Real estate is potentially contributing to the economic growth. It has a strong correlation
between property owners and beneficiaries. The accurate forecast of future property prices …