2022
DOI: 10.3390/e24020152
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Representation Learning for Dynamic Functional Connectivities via Variational Dynamic Graph Latent Variable Models

Abstract: Latent variable models (LVMs) for neural population spikes have revealed informative low-dimensional dynamics about the neural data and have become powerful tools for analyzing and interpreting neural activity. However, these approaches are unable to determine the neurophysiological meaning of the inferred latent dynamics. On the other hand, emerging evidence suggests that dynamic functional connectivities (DFC) may be responsible for neural activity patterns underlying cognition or behavior. We are interested… Show more

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References 47 publications
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