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Hyperbolic Deep Neural Networks: A Survey
[article]
2021
arXiv
pre-print
Recently, there has been a rising surge of momentum for deep representation learning in hyperbolic spaces due to theirhigh capacity of modeling data like knowledge graphs or synonym hierarchies, possessing hierarchical structure. We refer to the model as hyperbolic deep neural network in this paper. Such a hyperbolic neural architecture potentially leads to drastically compact model withmuch more physical interpretability than its counterpart in Euclidean space. To stimulate future research,
arXiv:2101.04562v3
fatcat:yqj4zohrqjbplpsdy5f5uglnbu