Poster
in
Affinity Workshop: LatinX in AI (LXAI) Research at ICML 2021
Computation of Discrete Flows Over Networks via Constrained Wasserstein Barycenters
Ferran Arque · Cesar Uribe
Keywords: [ Gaussian Processes and Bayesian non-parametrics ]
We study a Wasserstein attraction approach for solving dynamic mass transport problems over networks. In the transport problem over networks, we start with a distribution over the set of nodes that needs to be "transported" to a target distribution accounting for the network topology. We exploit the specific structure of the problem, characterized by the computation of implicit gradient steps, and formulate an approach based on discretized flows. As a result, our proposed algorithm relies on the iterative computation of constrained Wasserstein barycenters. We show how the proposed method finds approximate solutions to the network transport problem, taking into account the topology of the network, the capacity of the communication channels, and the capacity of the individual nodes.