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Online Classification Of Dynamic Multilayer-Network Time Series In Riemannian Manifolds

Cong Ye, Konstantinos Slavakis, Johan Nakuci, Sarah Muldoon, John Medaglia

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    Length: 00:14:51
10 Jun 2021

This work exploits Riemannian manifolds to introduce a geometric framework for online state and community classification in dynamic multilayer networks where nodes are annotated with time series. A bottom-up approach is followed, starting from the extraction of Riemannian features from nodal time series, and reaching up to online/sequential classification of features via geodesic distances and angular information in the tangent spaces of a Riemannian manifold. As a case study, features in the Grassmann manifold are generated by fitting a kernel autoregressive-moving-average model to the nodal time series of the multilayer network. The paper highlights also numerical tests on synthetic and real brain-network data, where it is shown that the proposed geometric framework outperforms state-of-the-art deep-learning models in classification accuracy, especially in cases where the number of training data is small with respect to the number of the testing ones.

Chairs:
Hichem Sahbi

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