TY - GEN
T1 - Modeling Behavior Change for Multi-model At-Risk Students Early Prediction
AU - Cheng, Jiabei
AU - Yang, Zhen Qun
AU - Cao, Jiannong
AU - Yang, Yu
AU - Poon, Kai Cheung Franky
AU - Lai, Daniel
N1 - Publisher Copyright:
© 2024 IEEE.
PY - 2024
Y1 - 2024
N2 - In the educational domain, identifying students at risk of dropping out is essential for allowing educators to intervene effectively, improving both academic outcomes and overall student well-being. Data in educational settings often originate from diverse sources, such as assignments, grades, and attendance records. However, most existing research relies on online learning data and just extracting the quantitative features. While quantification eases processing, it also leads to a significant loss of original information. Moreover, current models primarily identify students with consistently poor performance through simple and discrete behavioral patterns, failing to capture the complex continuity and non-linear changes in student behavior. We have developed an innovative prediction model, MultimodalChangePoint Detection (MCPD), utilizing the textual teacher remark data and numerical grade data from middle schools. Our model achieves a highly integrated and intelligent analysis by using independent encoders to process two types of data, fusing the encoded feature. The model further refines its analysis by leveraging a changepoint detection module to pinpoint crucial behavioral changes, which are integrated as dynamic weights through a simple attention mechanism. Experimental validations indicate that our model achieves an accuracy range of 70-75%, with an average outperforming baseline algorithms by approximately 5-10%. Additionally, our algorithm demonstrates a certain degree of transferability, maintaining high accuracy when adjusted and retrained with different definitions of at-risk, proving its broad applicability.
AB - In the educational domain, identifying students at risk of dropping out is essential for allowing educators to intervene effectively, improving both academic outcomes and overall student well-being. Data in educational settings often originate from diverse sources, such as assignments, grades, and attendance records. However, most existing research relies on online learning data and just extracting the quantitative features. While quantification eases processing, it also leads to a significant loss of original information. Moreover, current models primarily identify students with consistently poor performance through simple and discrete behavioral patterns, failing to capture the complex continuity and non-linear changes in student behavior. We have developed an innovative prediction model, MultimodalChangePoint Detection (MCPD), utilizing the textual teacher remark data and numerical grade data from middle schools. Our model achieves a highly integrated and intelligent analysis by using independent encoders to process two types of data, fusing the encoded feature. The model further refines its analysis by leveraging a changepoint detection module to pinpoint crucial behavioral changes, which are integrated as dynamic weights through a simple attention mechanism. Experimental validations indicate that our model achieves an accuracy range of 70-75%, with an average outperforming baseline algorithms by approximately 5-10%. Additionally, our algorithm demonstrates a certain degree of transferability, maintaining high accuracy when adjusted and retrained with different definitions of at-risk, proving its broad applicability.
KW - At-risk student prediction
KW - Changepoint detection
KW - Data fusion
KW - Multi-modality
KW - Offline learning
UR - https://www.scopus.com/pages/publications/85206576846
U2 - 10.1109/ISET61814.2024.00020
DO - 10.1109/ISET61814.2024.00020
M3 - Conference article published in proceeding or book
AN - SCOPUS:85206576846
T3 - Proceedings - 2024 International Symposium on Educational Technology, ISET 2024
SP - 54
EP - 58
BT - Proceedings - 2024 International Symposium on Educational Technology, ISET 2024
A2 - Chui, Kwok Tai
A2 - Hui, Yan Keung
A2 - Yang, Dingqi
A2 - Lee, Lap-Kei
A2 - Wong, Leung-Pun
A2 - Reynolds, Barry Lee
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 10th International Symposium on Educational Technology, ISET 2024
Y2 - 29 July 2024 through 1 August 2024
ER -