Work place: Graduate School of Information Science and Engineering, Ritsumeikan University, Japan
E-mail: simakawa@cs.ritsumei.ac.jp
Website:
Research Interests: Computational Science and Engineering, Computational Engineering, Data Structures and Algorithms
Biography
Hiromitsu Shimakawa Prof.Hiromitsu Shimakawa received Ph.D degree from Kyoto Univ. in 1999. Since 2002, He has worked in Ritsumeikan Univ. as a professor. His research interests include data engineering, usability, and integration of psychology with IT. He is a member of IEEE and ACM.
By Fumiko Harada Rin Nagai Hiromitsu Shimakawa
DOI: https://doi.org/10.5815/ijmecs.2022.05.02, Pub. Date: 8 Oct. 2022
In online education through web conference tools, teachers cannot grasp students' states by watching their behaviors like in an offline classroom. Each student also cannot be affected by others' good behavior. This paper proposes a prediction method of the student effort through acceleration sensors and a heart rate sensor worn on a student's body, and a local camera. The effort is expressed by the levels of concentration, excitation, and bodily action. A Random Forest regression model is used to predict each level from the sensor and camera data. Exhibiting the prediction result brings visibility of student states like offline. We verified the effectiveness of the prediction model through an experiment. We built the Random Forest regression prediction models from the sensors, camera, and student effort data obtained by actual lectures. In the case of building one prediction model for one lecture/one subject, the average R2 values were 0.953, 0.925, and 0.930 in the concentration, excitation, and bodily action, respectively. The R2 was -0.835 when one prediction model trained by one lecture's data is applied for another lecture's prediction. That was 0.285 when one model by 4 subjects' data is applied for prediction for the rest 1 subject. It means that the prediction model has high accuracy but is dependent on individual persons and lectures, which forces a burden to individual student to collect initial training data for individual lecture to build a prediction model. We also found that the acceleration data are the most important features. It implies the effectiveness of using acceleration sensors to predict student effort.
[...] Read more.Subscribe to receive issue release notifications and newsletters from MECS Press journals