TY - GEN
T1 - Predicting Group Work Performance from Physical Handwriting Features in a Smart English Classroom
AU - Song, Meishu
AU - Qian, Kun
AU - Chen, Bin
AU - Okabayashi, Keiju
AU - Parada-Cabaleiro, Emilia
AU - Yang, Zijiang
AU - Liu, Shuo
AU - Togami, Kazumasa
AU - Hidaka, Ichiro
AU - Wang, Yueheng
AU - Schuller, Bjoern
AU - Yamamoto, Yoshiharu
N1 - Publisher Copyright:
© 2021 ACM.
PY - 2021/2/26
Y1 - 2021/2/26
N2 - Embodied cognition theory states that students thinking in a learning environment is embodied in physical activity. In this regard, recent research has shown that signal-level handwriting dynamics can distinguish learning performance. Although machine learning has been considered to detect how multimodal modalities correlate to specific learning processes, the use of deep learning has received insufficient attention. With this in mind, we build a Group Work Performance Prediction system from analysis of 3D (including strokes frequency) handwriting signals of students in a smart English classroom, with deep convolutional neuronal network (CNN) based regression models. For labelling of their proficiency level, their spoken language performance is being used. The students were working together in groups. A 3D (2D writing coordinates plus frequency) handwriting dataset (3D-Writing-DB) was collected through a collaboration platform known as g creative digital space'. We extracted the 3D handwriting signal from a table tablet during English discussion sessions. Afterwards, professional English teachers annotated the English speech (values vary from 0 - 5). Our experimental results indicate that group work performance can be successfully predicted from physical handwriting features by using deep learning, as shown by our best result, i. e., 0.32 in regression assessment by applying RMSE for evaluation.
AB - Embodied cognition theory states that students thinking in a learning environment is embodied in physical activity. In this regard, recent research has shown that signal-level handwriting dynamics can distinguish learning performance. Although machine learning has been considered to detect how multimodal modalities correlate to specific learning processes, the use of deep learning has received insufficient attention. With this in mind, we build a Group Work Performance Prediction system from analysis of 3D (including strokes frequency) handwriting signals of students in a smart English classroom, with deep convolutional neuronal network (CNN) based regression models. For labelling of their proficiency level, their spoken language performance is being used. The students were working together in groups. A 3D (2D writing coordinates plus frequency) handwriting dataset (3D-Writing-DB) was collected through a collaboration platform known as g creative digital space'. We extracted the 3D handwriting signal from a table tablet during English discussion sessions. Afterwards, professional English teachers annotated the English speech (values vary from 0 - 5). Our experimental results indicate that group work performance can be successfully predicted from physical handwriting features by using deep learning, as shown by our best result, i. e., 0.32 in regression assessment by applying RMSE for evaluation.
KW - English speaking proficiency
KW - deep learning 11Dr. Kun Qian is the corresponding author.
KW - digital classroom
KW - group work
KW - handwriting
UR - http://www.scopus.com/inward/record.url?scp=85115922487&partnerID=8YFLogxK
U2 - 10.1145/3458380.3458404
DO - 10.1145/3458380.3458404
M3 - Conference contribution
AN - SCOPUS:85115922487
T3 - ACM International Conference Proceeding Series
SP - 140
EP - 145
BT - 2021 5th International Conference on Digital Signal Processing, ICDSP 2021
PB - Association for Computing Machinery
T2 - 5th International Conference on Digital Signal Processing, ICDSP 2021
Y2 - 26 February 2021 through 28 February 2021
ER -