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Online Graph Dictionary Learning
[article]
2021
arXiv
pre-print
Dictionary learning is a key tool for representation learning, that explains the data as linear combination of few basic elements. Yet, this analysis is not amenable in the context of graph learning, as graphs usually belong to different metric spaces. We fill this gap by proposing a new online Graph Dictionary Learning approach, which uses the Gromov Wasserstein divergence for the data fitting term. In our work, graphs are encoded through their nodes' pairwise relations and modeled as convex
arXiv:2102.06555v2
fatcat:eqg6e7s3lrfe5g5uuihpryjhwq