Academic achievement inspired machine learning methods for student grade prediction and at-risk detection

Grade prediction is one of the several sub-disciplines among learning analytics transcends and has received increasing attention in recent years and remains one of the most challenging tasks. Grade prediction plays a central role in the development of data-informed approaches for at-risk student det...

Full description

Saved in:
Bibliographic Details
Main Author: Wei, Qiu
Other Authors: Andy Khong W H
Format: Thesis-Doctor of Philosophy
Language:English
Published: Nanyang Technological University 2024
Subjects:
Online Access:https://hdl.handle.net/10356/175913
Tags: Add Tag
No Tags, Be the first to tag this record!
Institution: Nanyang Technological University
Language: English
id sg-ntu-dr.10356-175913
record_format dspace
spelling sg-ntu-dr.10356-1759132024-06-03T06:51:19Z Academic achievement inspired machine learning methods for student grade prediction and at-risk detection Wei, Qiu Andy Khong W H School of Electrical and Electronic Engineering AndyKhong@ntu.edu.sg Computer and Information Science Grade prediction At-risk detection LSTM Academic achievement Grade prediction is one of the several sub-disciplines among learning analytics transcends and has received increasing attention in recent years and remains one of the most challenging tasks. Grade prediction plays a central role in the development of data-informed approaches for at-risk student detection and early intervention. This thesis addresses the grade prediction and at-risk student detection problem from student prior grade data. For grade prediction and at-risk student detection, this thesis focuses on the modeling of performance-centric data. Although several types of data exists for prediction, performance-centric data such as assessment scores are often made accessible to administrators, policymakers, instructors, and student care support personnel involved in administering interventions. To this end, sustained efforts have been focused on leveraging prior grades attained in consecutive (past) semesters to predict grades of pilot courses that have been registered in the upcoming or current semester. To achieve a high detection rate of at-risk student and reduce false alarm, a dual-mode long short-term memory (LSTM) model is proposed. As will be shown in this thesis, the proposed two-stage architecture employs the weighted-loss function and the short-term gated LSTM. Performance of the proposed grade prediction performance is evaluated on the dataset from three departments in a university. The proposed model improves the performance of LSTM by 28.8\% in terms of F1 score for at-risk classification. While the LSTM model is able to model the temporal information in student prior grades, there are other aspects of student performance that are important for grade prediction. To jointly consider the three important aspects\textemdash temporal dynamics of prior courses across previous semesters, short-term performance consistency, and relative performance against peers, an academic achievement inspired grade prediction (A2GP) model is proposed. Results obtained highlighted that the A2GP model improves the performance of LSTM and graph convolutional network (GCN) by 19.0\% and 63.3\%, respectively, in terms of F1 score for at-risk classification. Existing grade prediction methods do not take into account the constraints imposed on grade vectors. As a third contribution, a grade prediction framework is proposed for efficient information encoding that includes a relative performance module, a logic reasoning module, and a grade prediction module. The relative performance module employs a cohort-grade distribution that incorporates relative performance and the logic reasoning module embedded the sparse constraints as the representation. With the Transformer within the grade prediction module that encodes all relevant information, the model is able to outperform all baseline models for at-risk student detection. Doctor of Philosophy 2024-05-09T02:32:00Z 2024-05-09T02:32:00Z 2023 Thesis-Doctor of Philosophy Wei, Q. (2023). Academic achievement inspired machine learning methods for student grade prediction and at-risk detection. Doctoral thesis, Nanyang Technological University, Singapore. https://hdl.handle.net/10356/175913 https://hdl.handle.net/10356/175913 10.32657/10356/175913 en This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License (CC BY-NC 4.0). application/pdf Nanyang Technological University
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Computer and Information Science
Grade prediction
At-risk detection
LSTM
Academic achievement
spellingShingle Computer and Information Science
Grade prediction
At-risk detection
LSTM
Academic achievement
Wei, Qiu
Academic achievement inspired machine learning methods for student grade prediction and at-risk detection
description Grade prediction is one of the several sub-disciplines among learning analytics transcends and has received increasing attention in recent years and remains one of the most challenging tasks. Grade prediction plays a central role in the development of data-informed approaches for at-risk student detection and early intervention. This thesis addresses the grade prediction and at-risk student detection problem from student prior grade data. For grade prediction and at-risk student detection, this thesis focuses on the modeling of performance-centric data. Although several types of data exists for prediction, performance-centric data such as assessment scores are often made accessible to administrators, policymakers, instructors, and student care support personnel involved in administering interventions. To this end, sustained efforts have been focused on leveraging prior grades attained in consecutive (past) semesters to predict grades of pilot courses that have been registered in the upcoming or current semester. To achieve a high detection rate of at-risk student and reduce false alarm, a dual-mode long short-term memory (LSTM) model is proposed. As will be shown in this thesis, the proposed two-stage architecture employs the weighted-loss function and the short-term gated LSTM. Performance of the proposed grade prediction performance is evaluated on the dataset from three departments in a university. The proposed model improves the performance of LSTM by 28.8\% in terms of F1 score for at-risk classification. While the LSTM model is able to model the temporal information in student prior grades, there are other aspects of student performance that are important for grade prediction. To jointly consider the three important aspects\textemdash temporal dynamics of prior courses across previous semesters, short-term performance consistency, and relative performance against peers, an academic achievement inspired grade prediction (A2GP) model is proposed. Results obtained highlighted that the A2GP model improves the performance of LSTM and graph convolutional network (GCN) by 19.0\% and 63.3\%, respectively, in terms of F1 score for at-risk classification. Existing grade prediction methods do not take into account the constraints imposed on grade vectors. As a third contribution, a grade prediction framework is proposed for efficient information encoding that includes a relative performance module, a logic reasoning module, and a grade prediction module. The relative performance module employs a cohort-grade distribution that incorporates relative performance and the logic reasoning module embedded the sparse constraints as the representation. With the Transformer within the grade prediction module that encodes all relevant information, the model is able to outperform all baseline models for at-risk student detection.
author2 Andy Khong W H
author_facet Andy Khong W H
Wei, Qiu
format Thesis-Doctor of Philosophy
author Wei, Qiu
author_sort Wei, Qiu
title Academic achievement inspired machine learning methods for student grade prediction and at-risk detection
title_short Academic achievement inspired machine learning methods for student grade prediction and at-risk detection
title_full Academic achievement inspired machine learning methods for student grade prediction and at-risk detection
title_fullStr Academic achievement inspired machine learning methods for student grade prediction and at-risk detection
title_full_unstemmed Academic achievement inspired machine learning methods for student grade prediction and at-risk detection
title_sort academic achievement inspired machine learning methods for student grade prediction and at-risk detection
publisher Nanyang Technological University
publishDate 2024
url https://hdl.handle.net/10356/175913
_version_ 1814047307810734080