Chiedozie John Onyianta

Work place: Department. of Computer Science, Faculty of Physical Sciences, University of Nigeria, Nsukka, Nigeria

E-mail: jonnyspencer210@gmail.com

Website: https://orcid.org/0000-0003-1955-2238

Research Interests:

Biography

Onyianta John Chiedozie is a highly accomplished scholar who earned both his Master of Science (2017) and Bachelor‘s (2013) degrees in Computer Science from the prestigious University of Nigeria, Nsukka. With a strong specialization in Artificial Intelligence, he is passionately driving research that leverages AI techniques to transform personalized and collaborative learning. His interests extend into machine learning and data mining, where he continues to explore innovative solutions with real-world impact. Beyond his core focus, John Chiedozie has collaborated with other researchers on diverse projects across the field of Computer Science, spanning from system modeling to design and implementation. His commitment to advancing technology, combined with his proven academic and research background, positions him as a forward-thinking contributor in the evolving world of Artificial Intelligence and Computer Science.

Author Articles
Advancing a Type-1 Rule-Based Fuzzy Logic Learning Model for Measuring Learner Engagement and Content Adjustment

By Chiedozie John Onyianta Deborah Uzoamaka Ebem Anayo Chukwu Ikegwu Chibueze Valentine Ikpo

DOI: https://doi.org/10.5815/ijeme.2025.06.03, Pub. Date: 8 Dec. 2025

Over the years, learning has shifted from a conventional classroom environment to a digital space due to an increased interest in e-learning and swift innovations in information technology. This has brought the attention of many individuals and institutions to delve into building various approaches for adaptive e-learning technologies. Most existing e-learning systems are teacher-based, time-wasting and do not monitor learners’ progress levels. This paper presents a type-1 rule-based fuzzy logic model to implement an adaptive e-learning system by identifying students’ prior knowledge, learning style, and learning pace. The system was designed with Object-Oriented Analysis and Design Methodology and implemented using PHP, JavaScript, and MySQL technologies. A total of 31 first-year students of the University of Nigeria, Nsukka, participated in the evaluation of the software. The pre-test measured the students' prior knowledge, and the performance of each student was mapped. The system monitors students’ engagement levels and performance to improve learning outcomes. It also has an ‘Ask Teacher’ feature, which allows a student to ask the teacher questions outside the forum and the student’s feedback form. Each chapter has a pre-test to test the student’s existing knowledge, well-explained chapter content in text and audio-visual format, and a post-test to test their performance at the end of each chapter. After participating in the experiment, a questionnaire was used to collect the general students’ views on online-adaptive learning. The study implies that it assists students, teachers, and universities to have seamless learning and offers a quick feedback mechanism for the university’s decision-making.  

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