The usage of physiological measures in detecting student’s interest is often said to improve the weakness of psychological measures by decreasing the susceptibility of subjective bias. The existing methods, especially EEG-based, use classification, which needs a predefined class and complex computational to analyze. However, the predefined classes are mostly based on subjective measurement (e.g., questionnaires). This work proposed a new scheme to automatically cluster the students by the level of situational interest (SI) during learning-based lessons on their electroencephalography (EEG) features. The formed clusters are then used as ground truth for classification purposes. A simultaneous recording of EEG was performed on 30 students whi...
International audienceOBJECTIVE: Tracking the level of performance in cognitive tasks may be useful ...
International audienceThis paper describes a proposal of relevant clustering features and the result...
AbstractThis study proposed the application of cluster analysis to classify the brainwaves of stroke...
Brainwaves are analyzed, visualized, and are used to predict academic emotion based computational in...
Ten (10) first year college programming students participated in the study and reported their emotio...
Situational interest (SI) is one of the promising states that can improve student’s learning and inc...
Currently, there is a great interest in knowing more in detail what happens in a student's mind in t...
This thesis aims to analyze neural data in an overall effort by the Charles Stark Draper Laboratory...
In this paper, we applied a number of clustering algorithms on pretest data collected from 264 high-...
Educational theory claims that integrating learning style into learning-related activities can impro...
In this study, a new method was developed to detect student involvement in the online learning proce...
Multiple studies show that electroencephalogram (EEG) signals behave differently when humans experie...
EEG signal analysis is a powerful technique to decode the activities of the human brain. Emotion det...
Assessing the cognitive abilities of students in academic contexts can provide valuable insights for...
The goal of this study was to evaluate whether Electroencephalography (EEG) estimates of attention a...
International audienceOBJECTIVE: Tracking the level of performance in cognitive tasks may be useful ...
International audienceThis paper describes a proposal of relevant clustering features and the result...
AbstractThis study proposed the application of cluster analysis to classify the brainwaves of stroke...
Brainwaves are analyzed, visualized, and are used to predict academic emotion based computational in...
Ten (10) first year college programming students participated in the study and reported their emotio...
Situational interest (SI) is one of the promising states that can improve student’s learning and inc...
Currently, there is a great interest in knowing more in detail what happens in a student's mind in t...
This thesis aims to analyze neural data in an overall effort by the Charles Stark Draper Laboratory...
In this paper, we applied a number of clustering algorithms on pretest data collected from 264 high-...
Educational theory claims that integrating learning style into learning-related activities can impro...
In this study, a new method was developed to detect student involvement in the online learning proce...
Multiple studies show that electroencephalogram (EEG) signals behave differently when humans experie...
EEG signal analysis is a powerful technique to decode the activities of the human brain. Emotion det...
Assessing the cognitive abilities of students in academic contexts can provide valuable insights for...
The goal of this study was to evaluate whether Electroencephalography (EEG) estimates of attention a...
International audienceOBJECTIVE: Tracking the level of performance in cognitive tasks may be useful ...
International audienceThis paper describes a proposal of relevant clustering features and the result...
AbstractThis study proposed the application of cluster analysis to classify the brainwaves of stroke...