Thaiyalnayaki S.

Work place: Department of Computer Science and Engineering, Bharath Institute of Higher Education and Research, Chennai, Tamil Nadu, India

E-mail: thaiyalnayaki.cse@bharathuniv.ac.in

Website: https://orcid.org/0009-0006-4973-8147

Research Interests:

Biography

Thaiyalnayaki S. is currently a full time Associate Professor (since Nov. 2019) in the Department of Computer Science and Engineering (CSE) at Bharath Institute of Higher Education and Research. She has joined as an Assistant Professor (since JAN. 2008) in the Department of Computer Science and Engineering (CSE) at Dhanalakshmi Srinivasan College of Engineering and Technology, and then she was promoted to Associate Professor position (in Jun. 2019) in the Department of CSE. She has more than 14 years of Teaching Experience She earned his doctorate in Computer Science and Engineering from Annamalai University, in 2019. Her research concentrated on the role of Indexing Near duplicate image detection in web search using Optimization Techniques. Her research interests include Image Processing, Wireless Sensor Networks, Machine learning and deep learning.

Author Articles
Enhancing Student Performance Prediction in E-Learning Environments: Advanced Ensemble Techniques and Robust Feature Selection

By N. S. Koti Mani Kumar Tirumanadham Thaiyalnayaki S.

DOI: https://doi.org/10.5815/ijmecs.2025.02.03, Pub. Date: 8 Apr. 2025

By means of a thorough investigation of ensemble methodologies and feature selection approaches, this work explores enhancing predictive modelling in e-learning contexts. The setting is in the growing significance of data-driven decision-making in education and tailored learning programs. The main concern is how to fairly forecast student performance in environments of digital learning. This work intends to solve gaps by investigating new ensemble models and robust feature selection techniques based on already published research. Using cutting-edge analytical techniques including hybrid BR2-2T models and the Chi-square test, the study produces remarkable accuracy surpassing known limits. The results underline the need of feature selection and ensemble methods in improving forecast accuracy and dependability. Finally, this study marks a major step in the field of e-learning predictive modelling since it helps to improve educational results and enable data-driven interventions.

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