Publication: Classification of Human Emotions using Ensemble Classifier by Analysing EEG Signals
Type:
Article
Date
2021-04-13
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
IEEE
Abstract
This study is based on EEG brain wave classification of a well-known dataset called the EEG Brainwave Dataset. The dataset combines three classes such as positive, negative, and neutral. The classification is performed using an ensemble classifier that combines RF, KNN, DT, SVM, NB, and LR. The meta classifier is LR, while the other five algorithms work as the base classifiers. Furthermore, PCA is used as the dimension reduction method to increase the accuracy of the final output. The results are evaluated under 11 different parameters. Moreover, the accuracy of this study is compared with the seven other EEG emotion classification methods. The proposing method attained 99.25% of accuracy, outperforming the other state-of-the-art algorithms.
Description
Keywords
Human Emotions, Classification, Ensemble Classifier, EEG Signals, Analysing
Citation
L. I. Mampitiya, R. Nalmi and N. Rathnayake, "Classification of Human Emotions using Ensemble Classifier by Analysing EEG Signals," 2021 IEEE Third International Conference on Cognitive Machine Intelligence (CogMI), 2021, pp. 71-77, doi: 10.1109/CogMI52975.2021.00018.
