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Hyperparameter Optimization of Deep Learning Models for EEG-Based Vigilance Detection

  • Souhir Khessiba
  • , Ahmed Ghazi Blaiech
  • , Antoine Manzanera
  • , Khaled Ben Khalifa
  • , Asma Ben Abdallah
  • , Mohamed Hédi Bedoui

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Résumé

ElectroEncephaloGraphy (EEG) signals have a nonlinear and complex nature and require the design of sophisticated methods for their analysis. Thus, Deep Learning (DL) models, which have enabled the automatic extraction of complex data features at high levels of abstraction, play a growing role in the field of medical science to help diagnose various diseases, and have been successfully used to predict the vigilance states of individuals. However, the performance of these models is highly sensitive to the choice of the hyper-parameters that define the structure of the network and the learning process. When targeting an application, tuning the hyper-parameters of deep neural networks is a tedious and time-consuming process. This explains the necessity of automating the calibration of these hyper-parameters. In this paper, we perform hyper-parameters optimization using two popular methods: Tree Parzen Estimator (TPE) and Bayesian optimisation (BO) to predict vigilance states of individuals based on their EEG signal. The performance of the methods is evaluated on the vigilance states classification. Compared with empirical optimization, the accuracy is improved from 0.84 to 0.93 with TPE and from 0.84 to 0.97 with Bayesian optimization using the 1D-UNet-LSTM deep learning model. Obtained results show that the combination of the 1D-UNet encoder and LSTM offers an excellent compromise between the performance and network size (thus training duration), which allows a more efficient hyper-parameter optimization.

langue originaleAnglais
titreAdvances in Computational Collective Intelligence - 14th International Conference, ICCCI 2022, Proceedings
rédacteurs en chefCostin Bădică, Jan Treur, Djamal Benslimane, Bogumiła Hnatkowska, Marek Krótkiewicz
EditeurSpringer Science and Business Media Deutschland GmbH
Pages200-210
Nombre de pages11
ISBN (imprimé)9783031162091
Les DOIs
étatPublié - 1 janv. 2022
Modification externeOui
Evénement14th International Conference on Computational Collective Intelligence, ICCCI 2022 - Hammamet, Tunisie
Durée: 28 sept. 202230 sept. 2022

Série de publications

NomCommunications in Computer and Information Science
Volume1653 CCIS
ISSN (imprimé)1865-0929
ISSN (Electronique)1865-0937

Une conférence

Une conférence14th International Conference on Computational Collective Intelligence, ICCCI 2022
Pays/TerritoireTunisie
La villeHammamet
période28/09/2230/09/22

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