Academic Performance prediction for undergraduate students is considered as one of the hot research areas since last couple of decades. An accurate and timely prediction of the student’s performance can directly influence the three participants; learner, instructor and the institution. This study presents a brief, preliminary review to explore existing literature from 2010 to 2022 in the context of performance prediction for Undergraduate Degree Programs (UDP). This review is organized according to Online and Traditional Education Systems (TES), and granularity level of performance output i.e., Degree program (Final CGPA), Next-semester, and the Course level grades. Aggregate analysis of the extracted data reveals that course level predicti...
Abstract: The paper is ready to predict scholars’ overall performance on online medium the use of ...
Educational data mining is an emerging interdisciplinary research area involving both education and ...
A comprehensive systematic study was carried out in order to identify various deep learning methods ...
Predicting student academic performance is a critical area of education research. Machine learning (...
Abstract — Predicting students' future performance based on their current academic records is import...
Higher education institutions play a vital role in providing quality education and producing skilled...
Students at Saudi universities face difficulty registering for the right course since Student perfor...
Student dropout still becomes a critical problem in education. Educational Data Mining (EDM) can br...
The objective of the study is to use a method to predict student performance during the semesters a...
In this paper, the efficacy of machine learning (ML) techniques for predicting the academic success ...
Machine learning (ML) is utilized constantly in various industries because its possibility to provid...
The present work proposes the application of machine learning techniques to predict the final grades...
The ability to predict student performance in a course or program creates opportunities to improve e...
Despite of providing high quality of education, demand on predicting student academic performance be...
The purpose of this research is to investigate the effective factors in predicting the academic perf...
Abstract: The paper is ready to predict scholars’ overall performance on online medium the use of ...
Educational data mining is an emerging interdisciplinary research area involving both education and ...
A comprehensive systematic study was carried out in order to identify various deep learning methods ...
Predicting student academic performance is a critical area of education research. Machine learning (...
Abstract — Predicting students' future performance based on their current academic records is import...
Higher education institutions play a vital role in providing quality education and producing skilled...
Students at Saudi universities face difficulty registering for the right course since Student perfor...
Student dropout still becomes a critical problem in education. Educational Data Mining (EDM) can br...
The objective of the study is to use a method to predict student performance during the semesters a...
In this paper, the efficacy of machine learning (ML) techniques for predicting the academic success ...
Machine learning (ML) is utilized constantly in various industries because its possibility to provid...
The present work proposes the application of machine learning techniques to predict the final grades...
The ability to predict student performance in a course or program creates opportunities to improve e...
Despite of providing high quality of education, demand on predicting student academic performance be...
The purpose of this research is to investigate the effective factors in predicting the academic perf...
Abstract: The paper is ready to predict scholars’ overall performance on online medium the use of ...
Educational data mining is an emerging interdisciplinary research area involving both education and ...
A comprehensive systematic study was carried out in order to identify various deep learning methods ...