BTTDA: Block-Term Tensor Discriminant Analysis for Brain-Computer Interfacing
Arne Van Den Kerchove, Hakim Si-Mohammed, Fran\c{c}ois Cabestaing, Marc M. Van Hulle

TL;DR
This paper introduces BTTDA, a novel tensor-based supervised feature extraction method for brain-computer interfaces, which improves classification accuracy and interpretability over existing tensor decompositions.
Contribution
BTTDA extends HODA with a flexible block-term tensor model and a deflation scheme, enhancing EEG data classification in BCI applications.
Findings
BTTDA outperforms HODA in ERP decoding with ROC-AUC = 91.25%.
BTTDA significantly improves motor imagery classification accuracy.
Block-term structure enables interpretable and efficient feature extraction.
Abstract
Brain-computer interfaces (BCIs) allow direct communication between the brain and external devices, frequently using electroencephalography (EEG) to record neural activity. Dimensionality reduction and structured regularization are essential for effectively classifying task-related brain signals, including event-related potentials (ERPs) and motor imagery (MI) rhythms. Current tensor-based approaches, such as Tucker and PARAFAC decompositions, often lack the flexibility needed to fully capture the complexity of EEG data. This study introduces Block-Term Tensor Discriminant Analysis (BTTDA): a novel tensor-based and supervised feature extraction method designed to enhance classification accuracy by providing flexible multilinear dimensionality reduction. Extending Higher Order Discriminant Analysis (HODA), BTTDA uses a novel and interpretable forward model for HODA combined with a…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Tensor decomposition and applications · Functional Brain Connectivity Studies
