Mohammed F. Alrahmawy

Work place: Faculty of computer and information sciences, Computer science dept, Mansoura University, Egypt

E-mail: mrahmawy@mans.edu.eg

Website:

Research Interests: Computer systems and computational processes, Computer Architecture and Organization, Distributed Computing, Parallel Computing, Computing Platform, Data Structures and Algorithms

Biography

Mohammed F. AlRahmawy received B.Eng. degree in Electronics Engineering from the University of Mansoura, Egypt, in 1997, and M.Sc. in Automatic Control Engineering from Mansoura University in 2001. In 2005, he joined the Realtime systems research group at The University of York, UK as a PhD research student, where he got Ph.D. degree in computer science in 2011. In 2011, he joined, as a lecturer, the Department of Computer Science, Mansoura University, in 2017 he became an associate professor at the same department, and in 2019 he was the Acting-Chair of the same department. Currently, he is an Academic visitor at Cardiff University, UK. His current research interests include Blockchain and Smart Contracts, Software Analysis, Realtime Systems and Languages, Fog and Cloud computing, Distributed and Parallel Computing, Soft Computing, Image Processing, Computer Vision, IoT and Big data. He was the receptionist of the best M.Sc. thesis award from Mansoura University in 2003. His PhD was fully funded by the Egyptian Ministry of Higher Education.

Author Articles
Enhanced Quantum Inspired Grey Wolf Optimizer for Feature Selection

By Asmaa M. El-ashry Mohammed F. Alrahmawy Magdi Z. Rashad

DOI: https://doi.org/10.5815/ijisa.2020.03.02, Pub. Date: 8 Jun. 2020

Grey wolf optimizer (GWO) is a nature inspired optimization algorithm. It can be used to solve both minimization and maximization problems. The binary version of GWO (BGWO) uses binary values for wolves’ positions rather than probabilistic values in the original GWO. Integrating BGWO with quantum inspired operations produce a novel enhanced quantum inspired binary grey wolf algorithm (EQI-BGWO). In this paper we used feature selection as an optimization problem to evaluate the performance of our proposed algorithm EQI-BGWO. Our method was evaluated against BGWO method by comparing the fitness value, number of eliminated features and global optima iteration number. it showed a better accuracy and eliminates higher number of features with good performance. Results show that the average error rate enhanced from 0.09 to 0.06 and from 0.53 to 0.52 and from 0.26 to 0.23 for zoo, Lymphography and diabetes dataset respectively using EQI-BGWO, Where the average number of eliminated features was reduced from 6.6 to 6.7 for zoo dataset and from 7.3 to 7.1 for Lymphography dataset and from 2.9 to 3.2 for diabetes dataset.

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