ARCHIVES

Research Article

Examining Successful Attributes for Undergraduate Using Machine Learning Techniques

S.Uma1Arul Prashath R2Bhavan Ramana E3Hemanth Kumar Reddy P4Chandru P5

¹ Associate professor, Department of Computer Science and Engineering, paavai Engineering College, Namakkal, TN, India. ²³⁴⁵ UG Student, Department of Computer Science and Engineering, paavai Engineering College, Namakkal, TN, India.

Published Online: March-April 2023

Pages: 680-687

Abstract

View PDF

Abstract: This study utilizes both supervised and unsupervised machine learning techniques to identify the key attributes that are often demonstrated by successful learners in a computer course. Learning an introduction to computers course can be challenging for students. This study aims to explore how successful students regulate their learning in this course. By answering these questions, teachers can gain valuable insights into how students learn and which strategies are most effective for their success. To compare the accuracy, precision, and sensitivity levels of classifiers, this study employed seven supervised machine learning algorithms and ensembles. Additionally, association rule and clustering techniques were utilized to identify the key attributes for successful students. However, it is important to note that the use of a convenience sample in this study may have limited the number of students in each cluster.

Related Articles

2023

Review: CFD Analysis Of triangular, square and Circular Shaped Helical Coil Heat Exchanger by Using Titanium Oxide Nano fluid

2023

Overview of Advancement of Inventory Models for Deteriorating Items with Time Based Uniform Price

2023

Enhanced Dynamic Voltage Restorer for Improving the Power Quality Using RETO Algorithm

2023

Crop Disease Detection Using Neural Network and Machine Learning Algorithms

2023

Transient & Steady Thermal Analysis of Two Different Types of 100 cc Engine by Using Fins

2023

Review: Analysis of Shell & Coil Heat Exchanger by Using Cuprous Oxide and Silica Nano fluid at Different Mass Flow Rate

2023

A Preliminary Study on Biodiesel Production Using Waste Cooking Oil as the Feedstock

2023

Predicting Real Estate Price Using Linear Regression

2023

Heart Disease Prediction using Machine Learning Algorithms

2023

Smart Parking System using IoT

Examining Successful Attributes for Undergraduate Using Machine Learning Techniques | IJIRE