Brainwaves (EEG signals) and mouse behavior information are shown to be useful in predicting academic emotions, such as confidence, excitement, frustration and interest. Twenty five college students were asked to use the Aplusix math learning software while their brainwaves signals and mouse behavior (number of clicks, duration of each click, distance traveled by the mouse) were automatically being captured. It is shown that by combining the extracted features from EEG signals with data representing mouse click behavior, the accuracy in predicting academic emotions substantially increases compared to using only features extracted from EEG signals or just mouse behavior alone. Furthermore, experiments were conducted to assess the prediction ...
Abstract: Our project focused on recognizing emotion from human brain activity, measured by EEG sign...
User-centered computer based learning is an emerging field of interdisciplinary research. Research i...
In this thesis we investigate the usefulness of various data sources for predicting emotions relevan...
Brainwaves (EEG signals) and mouse behavior information are shown to be useful in predicting academi...
Academic emotions such as confidence, excitement, frustration and interest may be predicted based on...
Academic emotions such as confidence, excitement, frustration and interest may be predicted based on...
There are various researches focusing on emotions recognition which include using different modaliti...
There are various researches focusing on emotions recognition which include using different modaliti...
The academic emotion of learners is difficult to predict using EEG data, unless these brainwaves dat...
Abstract. The Affective model of Interplay between Emotions and Learning (AMIBEL) is a model propose...
This paper investigates how the use of machine learning techniques can significantly predict the thr...
Abstract—This paper investigates how the use of machine learning techniques can significantly predic...
Multiple studies show that electroencephalogram (EEG) signals behave differently when humans experie...
Abstract: In this paper we discuss how learner’s electrical brain activity can be influenced by emot...
Brainwaves are analyzed, visualized, and are used to predict academic emotion based computational in...
Abstract: Our project focused on recognizing emotion from human brain activity, measured by EEG sign...
User-centered computer based learning is an emerging field of interdisciplinary research. Research i...
In this thesis we investigate the usefulness of various data sources for predicting emotions relevan...
Brainwaves (EEG signals) and mouse behavior information are shown to be useful in predicting academi...
Academic emotions such as confidence, excitement, frustration and interest may be predicted based on...
Academic emotions such as confidence, excitement, frustration and interest may be predicted based on...
There are various researches focusing on emotions recognition which include using different modaliti...
There are various researches focusing on emotions recognition which include using different modaliti...
The academic emotion of learners is difficult to predict using EEG data, unless these brainwaves dat...
Abstract. The Affective model of Interplay between Emotions and Learning (AMIBEL) is a model propose...
This paper investigates how the use of machine learning techniques can significantly predict the thr...
Abstract—This paper investigates how the use of machine learning techniques can significantly predic...
Multiple studies show that electroencephalogram (EEG) signals behave differently when humans experie...
Abstract: In this paper we discuss how learner’s electrical brain activity can be influenced by emot...
Brainwaves are analyzed, visualized, and are used to predict academic emotion based computational in...
Abstract: Our project focused on recognizing emotion from human brain activity, measured by EEG sign...
User-centered computer based learning is an emerging field of interdisciplinary research. Research i...
In this thesis we investigate the usefulness of various data sources for predicting emotions relevan...