LSHADE with semi-parameter adaptation hybrid with CMA-ES for solving CEC 2017 benchmark problems

AW Mohamed, AA Hadi, AM Fattouh… - 2017 IEEE Congress …, 2017 - ieeexplore.ieee.org
To improve the optimization performance of LSHADE algorithm, an alternative adaptation
approach for the selection of control parameters is proposed. The proposed algorithm …

A hybrid approach of differential evolution and artificial bee colony for feature selection

E Zorarpacı, SA Özel - Expert Systems with Applications, 2016 - Elsevier
Abstract “Dimensionality” is one of the major problems which affect the quality of learning
process in most of the machine learning and data mining tasks. Having high dimensional …

Gaining-sharing knowledge based algorithm with adaptive parameters hybrid with IMODE algorithm for solving CEC 2021 benchmark problems

AW Mohamed, AA Hadi, P Agrawal… - 2021 IEEE congress …, 2021 - ieeexplore.ieee.org
The initiative to introduce new benchmark problems has drawn attention to the development
of new optimization algorithms. Recently, a set of constrained benchmark problems has …

Measuring the curse of dimensionality and its effects on particle swarm optimization and differential evolution

S Chen, J Montgomery, A Bolufé-Röhler - Applied Intelligence, 2015 - Springer
The existence of the curse of dimensionality is well known, and its general effects are well
acknowledged. However, and perhaps due to this colloquial understanding, specific …

An analysis on the effect of selection on exploration in particle swarm optimization and differential evolution

S Chen, A Bolufé-Röhler, J Montgomery… - 2019 IEEE congress …, 2019 - ieeexplore.ieee.org
The goal of exploration to produce diverse search points throughout the search space can
be countered by the goal of selection to focus search around the fittest current solution (s). In …

[HTML][HTML] Evaluating the performance of meta-heuristic algorithms on CEC 2021 benchmark problems

AW Mohamed, KM Sallam, P Agrawal, AA Hadi… - Neural Computing and …, 2023 - Springer
To develop new meta-heuristic algorithms and evaluate on the benchmark functions is the
most challenging task. In this paper, performance of the various developed meta-heuristic …

Repairing the crossover rate in adaptive differential evolution

W Gong, Z Cai, Y Wang - Applied Soft Computing, 2014 - Elsevier
Differential evolution (DE) is a simple yet powerful evolutionary algorithm (EA) for global
numerical optimization. However, its performance is significantly influenced by its …

Real-parameter unconstrained optimization based on enhanced AGDE algorithm

AK Mohamed, AW Mohamed - Machine learning paradigms: Theory and …, 2019 - Springer
Adaptive guided differential evolution algorithm (AGDE) is a differential evolution (DE)
algorithm that utilizes the information of good and bad vectors in the population, it introduced …

Versatile black-box optimization

J Liu, A Moreau, M Preuss, J Rapin, B Roziere… - Proceedings of the …, 2020 - dl.acm.org
Choosing automatically the right algorithm using problem descriptors is a classical
component of combinatorial optimization. It is also a good tool for making evolutionary …

Differential evolution algorithm with strategy adaptation and knowledge-based control parameters

Q Fan, W Wang, X Yan - Artificial Intelligence Review, 2019 - Springer
The search capability of differential evolution (DE) is largely affected by control parameters,
mutation and crossover strategies. Therefore, choosing appropriate strategies and control …