Work place: University Malaysia Pahang Al-Sultan Abdullah Pekan, Pahang, Malaysia
E-mail: nhuzaimi@ump.edu.my
Website: https://orcid.org/0000-0002-2462-6265
Research Interests:
Biography
Noorhuzaimi Mohd Noor has been in the academic, research & consultancy field since 2003. She is currently a Head of Program (Entrepreneurship) at Centre of Creative Entrepreneur Development and Senior Lecturer at The Universiti Malaysia Pahang, Malaysia. She received her B.Sc. in Computer Science from the Universiti Putra Malaysia, Malaysia, in 1999, followed by a Master degree in Science from the same university, in 2003. She received her Ph.D. degree in Computer Sciences from Universiti Kebangsaan Malaysia, Malaysia, in 2016. She is the author of more than 20 research articles. Her research interests include natural language processing, expert system, and computer security. She is also a Reviewer for the Journal of Information and Communication Technology (JICT) and editor in charge for the International Journal of Software Engineering and Computer Systems (IJSECS). Dr. Noorhuzaimi is also a certified Professional Technologist from the Malaysia Board of Technologists (MBOT) and Malaysian Qualifications Agency (MQA) Assessor Panel where she is actively involved as Assessor Panel for Technology and Technical Academic Programs Accreditation.
By Ariful Islam Debajyoti Karmaker Abhijit Bhowmik Md Masum Billah Md Iftekharul Mobin Noorhuzaimi Mohd Noor
DOI: https://doi.org/10.5815/ijmecs.2025.02.04, Pub. Date: 8 Apr. 2025
Federated Learning (FL) is an emerging machine learning approach with promising applications. In this paper, FL is comprehensively examined in relation to teacher performance evaluation. Through FL, teachers can be evaluated based on data-driven metrics while preserving data privacy. There are several benefits, including data privacy preservation, collaborative learning, scalability, and privacy-preserving insights. Additionally, it faces problems related to communication efficiency, system heterogeneity, and statistical heterogeneity. To address these issues, we propose a novel clustering-based technique in federated learning. The technique aims to overcome the challenges of system heterogeneity and improve communication efficiency. We provide a comprehensive review of existing research on clustering techniques in the context of federated learning, offering insights into the state of the art in this field. In addition, we emphasize the need for advanced compression methods, enhanced privacy-preserving mechanisms, and robust aggregation algorithms for future federated learning research. To address these challenges, we present a clustering-based approach to address the merits and challenges of federated learning The clustering-based approach we propose in this research demonstrates promising results in terms of reducing communication overhead and improving model convergence in federated learning. These findings suggest that incorporating clustering techniques can significantly enhance the efficiency and effectiveness of federated learning algorithms, paving the way for more scalable and privacy-preserving distributed machine learning systems. The findings of this study suggest that clustering techniques can improve the efficiency and scalability of federated learning.
[...] Read more.Subscribe to receive issue release notifications and newsletters from MECS Press journals