The paper introduces the EEG Graph Lottery Ticket (EEG GLT) algorithm, an innovative technique for constructing adjacency matrices for EEG channels. This method does not require pre-existing knowledge of inter-channel relationships and can be tailored to suit both individual subjects and GCN model architectures.
The key highlights and insights are:
The EEG GLT algorithm outperformed the existing Pearson Correlation Coefficient (PCC) and Geodesic distance methods in classifying EEG MI signals. The EEG GLT method achieved a mean accuracy improvement of 13.39% over the PCC method.
The construction of the adjacency matrix had a significant influence on the classification accuracy, to a greater extent than the GCN model configurations. A basic GCN configuration utilizing the EEG GLT matrix exceeded the performance of even the most complex GCN setup with a PCC matrix in average accuracy.
The EEG GLT method reduced Multiply-Accumulate Operations (MACs) by up to 97% compared to the PCC method, while maintaining or enhancing accuracy. This makes the EEG GLT well-suited for real-time classification of EEG MI signals that demand intensive computational resources.
The EEG GLT adjacency matrix is asymmetrical and can be tailored to individual subjects and GCN model architectures, unlike the symmetric Geodesic and PCC adjacency matrices.
The optimal adjacency matrix density for EEG GLT was found to be below 22.53% for 2nd order GCN models and 59.00% or lower for 5th order GCN models, suggesting that a fully connected model between EEG channels may not be the most effective approach.
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by Htoo Wai Aun... at arxiv.org 04-18-2024
https://arxiv.org/pdf/2404.11075.pdfDeeper Inquiries