Mohammad A. Alsharaiah

Work place: Department of information technology, King Abdullah II School of Information Technology, The University of Jordan, Amman, Jordan

E-mail: m.sharaiah@ju.edu.jo

Website:

Research Interests:

Biography

Mohammad A. Alsharaiah is an Assistant Professor of Data Science and Artificial Intelligence with a PhD in Com- puter Science (AI) from Lincoln University, New Zealand. He has led several academic departments and established both Data Science and AI labs, demonstrating expertise in machine learning, cyber security intelligence, and complex systems modelling. Dr. Al Sharaiah’s research encompasses bioinformatics, deep learning, and big data analytics. He has published extensively in Scopus-indexed journals and actively supervises postgraduate and undergraduate research projects, contributing to advancing Al-driven solutions in academia and industry.

Author Articles
A Customized Machine Learning Model for Improving Malware Detection

By Mosleh M. Abualhaj Sumaya Al-Khatib Mahran Al-Zyoud Mohammad O. Hiari Ali Al-Allawee Mohammad A. Alsharaiah

DOI: https://doi.org/10.5815/ijcnis.2026.01.01, Pub. Date: 8 Feb. 2026

Malware detection is a significant factor in establishing effective cybersecurity in the face of constantly increasing cyber threats. This research article aims to investigate the field of machine learning (ML) techniques for malware detection. More specifically, the paper focuses on the Customized K-Nearest Neighbors (C-KNN) classifier and the Firefly Algorithm (FA). The work aims to assess the effectiveness of C-KNN and C-KNN with FA (C-KNN/FA) in malware identification using the MalMem-2022 dataset. The novelty of the proposed method lies in the synergistic integration of the C-KNN algorithm with the FA for metaheuristic optimization. The use of FA to select the most relevant features enables the C-KNN to train on a small and high-quality feature set. Therefore, the performance of malware detection will be improved. We compare the performance of both methods to understand the influence of KNN parameter adjustment and feature selection on malware classification. The C-KNN and C-KNN/FA have produced remarkable results in malware identification, reaching an accuracy of 99.98%. This accomplishment is quite encouraging. With regard to multiclass and binary classification methods, C-KNN and C-KNN/FA both perform better than their alternatives.

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