Graph learning from EEG data improves brain fingerprinting compared to correlation-based connectomes
Author:
Funder
Vetenskapsrådet
H2020 Marie Skłodowska-Curie Actions
EPFL
Publisher
Elsevier BV
Reference12 articles.
1. Brain fingerprinting using EEG;Miri,2023
2. Graph signal processing: overview, challenges, and applications;Ortega;Proc. IEEE,2018
3. Spectral representation of EEG data using learned graphs with application to motor imagery decoding;Miri;Biomed. Signal Process. Control,2024
4. How to learn a graph from smooth signals;Kalofolias,2016
5. The quest for identifiability in human functional connectomes;Amico;Sci. Rep.,2018
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