Coupled Support Tensor Machine Classification for Multimodal Neuroimaging Data
Li Peide, Seyyid Emre Sofuoglu, Tapabrata Maiti, Selin Aviyente

TL;DR
This paper introduces a novel supervised classification method called Coupled Support Tensor Machine (C-STM) that leverages latent factors from advanced coupled matrix-tensor factorization for multimodal neuroimaging data, improving classification accuracy.
Contribution
It proposes the C-STM model that integrates shared and individual latent factors with multiple kernels, providing a statistically consistent classifier for multimodal tensor data.
Findings
C-STM outperforms traditional classifiers in simulations.
C-STM achieves better accuracy in EEG-fMRI data analysis.
Theoretical convergence to Bayes risk is demonstrated.
Abstract
Multimodal data arise in various applications where information about the same phenomenon is acquired from multiple sensors and across different imaging modalities. Learning from multimodal data is of great interest in machine learning and statistics research as this offers the possibility of capturing complementary information among modalities. Multimodal modeling helps to explain the interdependence between heterogeneous data sources, discovers new insights that may not be available from a single modality, and improves decision-making. Recently, coupled matrix-tensor factorization has been introduced for multimodal data fusion to jointly estimate latent factors and identify complex interdependence among the latent factors. However, most of the prior work on coupled matrix-tensor factors focuses on unsupervised learning and there is little work on supervised learning using the jointly…
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Taxonomy
TopicsTensor decomposition and applications · Advanced Neural Network Applications
