M
Mohammed Azmi Al-Betar
Researcher at Ajman University of Science and Technology
Publications - 226
Citations - 6721
Mohammed Azmi Al-Betar is an academic researcher from Ajman University of Science and Technology. The author has contributed to research in topics: Computer science & Metaheuristic. The author has an hindex of 31, co-authored 162 publications receiving 4095 citations. Previous affiliations of Mohammed Azmi Al-Betar include Mid Sweden University & Al-Balqa` Applied University.
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Grey wolf optimizer: a review of recent variants and applications
TL;DR: In this review paper, several research publications using GWO have been overviewed and summarized and the main foundation of GWO is provided, which suggests several possible future directions that can be further investigated.
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A comprehensive review
Asaju La’aro Bolaji,Mohammed Azmi Al-Betar,Mohammed A. Awadallah,Ahamad Tajudin Khader,Laith Abualigah +4 more
TL;DR: The comprehensive review of Krill Herd Algorithm as applied to different domain is presented, which covers the applications, modifications, and hybridizations of the KH algorithms.
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A survey on applications and variants of the cuckoo search algorithm
TL;DR: A comprehensive review of all conducting intensive research survey into the pros and cons, main architecture, and extended versions of this algorithm.
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A harmony search algorithm for university course timetabling
TL;DR: A harmony search and a modified harmony search algorithm are applied to university course timetabling against standard benchmarks and the results show that the proposed methods are capable of providing viable solutions in comparison to previous works.
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Text feature selection with a robust weight scheme and dynamic dimension reduction to text document clustering
TL;DR: Three meta-heuristic algorithms are adapted to solve the feature selection problem and a new dynamic dimension reduction (DDR) method is provided to reduce the number of features used in clustering and thus improve the performance of the algorithms.