TY - JOUR
T1 - Design and Implementation of the Reliable Learning Style Recognition Mechanism Based on Fusion Labels and Ensemble Classification
AU - Ni, Qin
AU - Mi, Yifei
AU - Wu, Yonghe
AU - He, Liang
AU - Xu, Yuhui
AU - Zhang, Bo
N1 - Publisher Copyright:
© 2008-2011 IEEE.
PY - 2024
Y1 - 2024
N2 - Learning style recognition is an indispensable part of achieving personalized learning in online learning systems. The traditional inventory method for learning style identification faces the limitations such as subject and static characteristics. Therefore, an automatic and reliable learning style recognition mechanism is designed in this article. First, a learning style labeling framework (LSDFA) based on multilabel fusion is proposed, which can obtain learning style labels by mining the potential information of two sets of inventories. Furthermore, a two-layer ensemble model (SRGSML) based on learners' online learning behaviors data to recognize learners' learning styles is proposed, which combines the resampling technology (SMOTE) to solve the unreliable prediction problem caused by class imbalance. The superiority of the proposed mechanism is verified on learning behavior data of 2056 learners during the online teaching period of Shanghai Normal University. Experimental results show that the recognition accuracy of SRGSML reaches 0.977, as well as prove the effectiveness of the LSDFA for labeling learning style.
AB - Learning style recognition is an indispensable part of achieving personalized learning in online learning systems. The traditional inventory method for learning style identification faces the limitations such as subject and static characteristics. Therefore, an automatic and reliable learning style recognition mechanism is designed in this article. First, a learning style labeling framework (LSDFA) based on multilabel fusion is proposed, which can obtain learning style labels by mining the potential information of two sets of inventories. Furthermore, a two-layer ensemble model (SRGSML) based on learners' online learning behaviors data to recognize learners' learning styles is proposed, which combines the resampling technology (SMOTE) to solve the unreliable prediction problem caused by class imbalance. The superiority of the proposed mechanism is verified on learning behavior data of 2056 learners during the online teaching period of Shanghai Normal University. Experimental results show that the recognition accuracy of SRGSML reaches 0.977, as well as prove the effectiveness of the LSDFA for labeling learning style.
KW - Data fusion
KW - ensemble learning
KW - learning style recognition
KW - online learning behavior
KW - resampling technology
UR - https://www.scopus.com/pages/publications/85159682069
U2 - 10.1109/TLT.2023.3263568
DO - 10.1109/TLT.2023.3263568
M3 - 文章
AN - SCOPUS:85159682069
SN - 1939-1382
VL - 17
SP - 241
EP - 257
JO - IEEE Transactions on Learning Technologies
JF - IEEE Transactions on Learning Technologies
ER -