This repositories contains a series of notebooks for the application of machine learning classifiers on the Temple University Hospital (TUH) EEG dataset.
The dataset is publicly available here.
Sensitivity (or Recall), Specificity, Precision, Accuracy, and F1 Score reported on six machine learning classifiers
Models | Sensitivity (or Recall) | Specificity | Precision | Accuracy | F1 Score |
---|---|---|---|---|---|
Logistic Regression | 93.39 | 91.16 | 93.30 | 92.43 | 0.9300 |
K-Nearest Neighbour | 93.05 | 88.85 | 92.00 | 91.28 | 0.9250 |
Decision Tree | 92.06 | 90.04 | 92.52 | 91.20 | 0.9250 |
Random Forest | 96.40 | 81.15 | 87.65 | 90.01 | 0.9183 |
Support Vector Machine | 93.64 | 91.37 | 93.67 | 92.70 | 0.9400 |
Linear Discriminant Analysis | 90.08 | 87.77 | 90.65 | 89.08 | 0.9050 |
If you find this work useful, please cite
@INPROCEEDINGS{9756061,
author={Khan, Irfan Mabood and Khan, Mohd Maaz and Farooq, Omar},
booktitle={2022 5th International Conference on Computing and Informatics (ICCI)},
title={Epileptic Seizure Detection using EEG Signals},
year={2022},
pages={111-117},
doi={10.1109/ICCI54321.2022.9756061}}
}