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      Dynamic Persistent Homology for Brain Networks via Wasserstein Graph Clustering

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          Abstract

          We present the novel Wasserstein graph clustering for dynamically changing graphs. The Wasserstein clustering penalizes the topological discrepancy between graphs. The Wasserstein clustering is shown to outperform the widely used k-means clustering. The method applied in more accurate determination of the state spaces of dynamically changing functional brain networks.

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          Author and article information

          Journal
          31 December 2021
          Article
          2201.00087
          927e7b7e-64ea-438e-a4dc-858d9da13572

          http://creativecommons.org/licenses/by-nc-nd/4.0/

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          Custom metadata
          math.AT cs.LG q-bio.NC

          Neurosciences,Artificial intelligence,Geometry & Topology
          Neurosciences, Artificial intelligence, Geometry & Topology

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