Title:
|
MIND-WANDERING DETECTION MODEL
WITH ELECTROENCEPHALOGRAM |
Author(s):
|
Chutimon Rungsilp, Krerk Piromsopa, Atthaphon Viriyopase and Kongpop U-Yen |
ISBN:
|
978-989-8704-33-7 |
Editors:
|
Demetrios G. Sampson, Dirk Ifenthaler and Pedro IsaĆas |
Year:
|
2021 |
Edition:
|
Single |
Type:
|
Full |
First Page:
|
243 |
Last Page:
|
250 |
Language:
|
English |
Cover:
|
|
Full Contents:
|
click to dowload
|
Paper Abstract:
|
The study of mind-wandering is popular since it is linked to the emotional problems and working/learning performance.
In terms of education, it impacts comprehension during learning which affects academic success. Therefore, we sought to
develop a machine learning model for an embedded portable device that can categorize mind-wandering state to assist
people in keeping track of their minds. We utilize a low-channel EEG to record the brain state and to build the predictive
model because of its practicality and user-friendly. Most machine learning experiments in mind-wandering using EEG
exhibit good individual-level performance. For the group-level technique, only a few research has developed a model. As
a result, the goal of this research is to achieve a high-accuracy group-level model. Thus, Leave One Participant Out Cross
Validation (LOPOCV) was used to assess the model correctness. This study shows that using a baseline normalization
technique assists feature extraction and improves performance. The model was built using a support vector machine (SVM),
and the best model achieved an accuracy value of 75.6 percent. |
|
|
|
|