European Union’s Horizon 2020 research and innovation programme(101021607)
(K128780) Támogató: Nemzeti Kutatás, Fejlesztés és Innovációs Iroda
(RRF-2.3.1-21-2022-00006) Támogató: Egészségbiztonság Nemzeti Laboratórium
The arrangement of network nodes in hyperbolic spaces has become a widely studied
problem, motivated by numerous results suggesting the existence of hidden metric spaces
behind the structure of complex networks. Although several methods have already been
developed for the hyperbolic embedding of undirected networks, approaches able to
deal with directed networks are still in their infancy. Here, we present a framework
based on the dimension reduction of proximity matrices reflecting the network topology,
coupled with a general conversion method transforming Euclidean node coordinates into
hyperbolic ones even for directed networks. While proposing a measure of proximity
based on the shortest path length, we also incorporate an earlier Euclidean embedding
method in our pipeline, demonstrating the widespread applicability of our Euclidean-hyperbolic
conversion. Besides, we introduce a dimension reduction technique that maps the nodes
directly into the hyperbolic space of any number of dimensions with the aim of reproducing
a distance matrix measured on the given (un)directed network. According to various
commonly used quality scores, our methods are capable of producing high-quality embeddings
for several real networks.