M. A. Makhlouf

Work place: Faculty of Computers & Informatics, Suez Canal University, Ismailia, 41511, Egypt.

E-mail: m.abdallah@ci.suez.edu.eg

Website:

Research Interests: Bioinformatics, Computer systems and computational processes, Computational Learning Theory, Data Mining, Decision Support System, Combinatorial Optimization

Biography

Mohamed Abd Allah makhlouf is currently a lecturer in Faculty of Computer Science & informatics Suez Canal University. He received his First degree in Computer Science and Operation Research, Faculty of Science, Master degree in Expert systems, Faculty of Science Cairo university. He received his PhD degree in computer science, Faculty of Science, Zagazig University. He got the Post-Doctoral studies in Computer science from Granada University Spain in 2016.His research interests: Machine learning, data mining, intelligent Bioinformatics, metaheuristic optimization, Decision support systems and predictive models.

Author Articles
Dimensionality Reduction Using an Improved Whale Optimization Algorithm for Data Classification

By Ah. E. Hegazy M. A. Makhlouf Gh. S. El-Tawel

DOI: https://doi.org/10.5815/ijmecs.2018.07.04, Pub. Date: 8 Jul. 2018

Whale optimization algorithm is a newly proposed bio-inspired optimization technique introduced in 2016 which imitates the hunting demeanor of hump-back whales. In this paper, to enhance solution accuracy, reliability and convergence speed, we have introduced some modifications on the basic WOA structure. First, a new control parameter, inertia weight, is proposed to tune the impact on the present best solution, and an improved whale optimization algorithm (IWOA) is obtained. Second, we assess IWOA with various transfer functions to convert continuous solutions to binary ones. The pro-posed algorithm incorporated with the K-nearest neighbor classifier as a feature selection method for identifying feature subset that enhancing the classification accuracy and limiting the size of selected features. The proposed algorithm was compared with binary versions of the basic whale optimization algorithm, particle swarm optimization, genetic algorithm, antlion optimizer and grey wolf optimizer on 27 common UCI datasets. Optimization results demonstrate that the proposed IWOA not only significantly enhances the basic whale optimization algorithm but also performs much superior to the other algorithms.

[...] Read more.
Other Articles