A Literature Review of Student Performance Prediction in E-Learning Environment

2020 ◽  
Vol 01 (01) ◽  
pp. 22-36
Author(s):  
Ruth Chweya ◽  
Siti Mariyam Shamsuddin ◽  
Samuel-Soma M. Ajibade ◽  
Samuel Moveh
2021 ◽  
Vol 11 (22) ◽  
pp. 10907
Author(s):  
Boran Sekeroglu ◽  
Rahib Abiyev ◽  
Ahmet Ilhan ◽  
Murat Arslan ◽  
John Bush Idoko

Improving the quality, developing and implementing systems that can provide advantages to students, and predicting students’ success during the term, at the end of the term, or in the future are some of the primary aims of education. Due to its unique ability to create relationships and obtain accurate results, artificial intelligence and machine learning are tools used in this field to achieve the expected goals. However, the diversity of studies and the differences in their content create confusion and reduce their ability to pioneer future studies. In this study, we performed a systematic literature review of student performance prediction studies in three different databases between 2010 and 2020. The results are presented as percentages by categorizing them as either model, dataset, validation, evaluation, or aims. The common points and differences in the studies are determined, and critical gaps and possible remedies are presented. The results and identified gaps could be eliminated with standardized evaluation and validation strategies. It is determined that student performance prediction studies should be more frequently focused on deep learning models in the future. Finally, the problems that can be solved using a global dataset created by a global education information consortium, as well as its advantages, are presented.


2014 ◽  
Vol 31 (2) ◽  
pp. 89-96
Author(s):  
D. Mullins ◽  
F. Jabbar ◽  
N. Fenlon ◽  
K. C. Murphy

ObjectivesThe main objectives were to assess medical students’ opinions about e-learning in psychiatry undergraduate medical education, and to investigate a possible relationship between learning styles and preferences for learning modalities.MethodDuring the academic year 2009/2010, all 231 senior Royal College of Surgeons in Ireland (RCSI) medical students in their penultimate year of study were invited to answer a questionnaire that was posted online on Moodle, the RCSI virtual learning environment.ResultsIn all, 186 students responded to the questionnaire, a response rate of 80%. Significantly more students stated a preference for live psychiatry tutorials over e-learning lectures. Students considered flexible learning, having the option of viewing material again and the ability to learn at one’s own pace with e-learning lectures, to be more valuable than having faster and easier information retrieval.ConclusionStudents prefer traditional in-class studying, even when they are offered a rich e-learning environment. Understanding students’ learning styles has been identified as an important element for e-learning development, delivery and instruction, which can lead to improved student performance.


2022 ◽  
Vol 7 (1) ◽  
pp. 498
Author(s):  
Jonas De Deus Guterres ◽  
Kusuma Ayu Laksitowening ◽  
Febryanti Sthevanie

Predicting the performance of students plays an important role in every institution to protect their students from failures and leverage their quality in higher education. Algorithm and Programming is a fundamental course for the students who start their studies in Informatics. Hence, the scope of this research is to identify the critical attributes which influence student performance in the E-learning Environment on Moodle LMS (Learning Management System) Platform and its accuracy. Data mining helps the process of preprocessing data in a dataset from raw data to quality data for advanced analysis. Dataset set is consisting of student academic performance such as grades of Quizzes, Mid exams, Final exams, and Final projects. Moreover, the dataset from LMS is considered as well in the process of modeling, in terms of constructing the decision tree, such as punctuality submission of Quizzes, Assignments, and Final Projects. Regarding the Basic Algorithm and Programming course, which is separated into two subjects in the first and second semester, thus the research will predict the student performance in the Basic Algorithm and programming course in the second semester based on the Introduction to programming course in the first semester. Decision Tree techniques are applied by using information gain in ID3 algorithm to get the important feature which is the PP index has the highest information gain with value 0.44, also the accuracy between ID3 and J48 algorithm that shows ID3 has the highest accuracy of modeling which is 84.80% compared to J48 82.34%.


2017 ◽  
Vol 17 (2) ◽  
pp. 164-182 ◽  
Author(s):  
Thi-Oanh Tran ◽  
Hai-Trieu Dang ◽  
Viet-Thuong Dinh ◽  
Thi-Minh-Ngoc Truong ◽  
Thi-Phuong-Thao Vuong ◽  
...  

Abstract This paper presents a study on Predicting Student Performance (PSP) in academic systems. In order to solve the task, we have proposed and investigated different strategies. Specifically, we consider this task as a regression problem and a rating prediction problem in recommender systems. To improve the performance of the former, we proposed the use of additional features based on course-related skills. Moreover, to effectively utilize the outputs of these two strategies, we also proposed a combination of the two methods to enhance the prediction performance. We evaluated the proposed methods on a dataset which was built using the mark data of students in information technology at Vietnam National University, Hanoi (VNU). The experimental results have demonstrated that unlike the PSP in e-Learning systems, the regression-based approach should give better performance than the recommender system-based approach. The integration of the proposed features also helps to enhance the performance of the regression-based systems. Overall, the proposed hybrid method achieved the best RMSE score of 1.668. These promising results are expected to provide students early feedbacks about their (predicted) performance on their future courses, and therefore saving times of students and their tutors in determining which courses are appropriate for students’ ability.


2018 ◽  
Vol 8 (2) ◽  
pp. 60
Author(s):  
Yuhendri L.V

The development of information technology has spawned the innovation of learning technology, one of which is the application of E-learning that develops along the paradigm of learning changes. Implementation of E-learning in addition to providing benefits are also still faced with various problems that become challenges in the application of E-learning resulting in a variety of perceptions that develop in society. This article aims to describe the opportunities, challenges, and implementation of E-learning in Indonesia. This paper is a literature review by using relevant sources related to theoretical and empirical reviews of E-learning challenges, opportunities, and implementation. Sources of theoretical reviews use books, other documents on E-learning, while for empirical reviews using research results published in scientific journals.


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