European Union’s Horizon 2020 research and innovation programme(101021607)
(SNN139598)
(K128780) Támogató: Nemzeti Kutatás, Fejlesztés és Innovációs Iroda
Finding the optimal embedding of networks into low-dimensional hyperbolic spaces is
a challenge that received considerable interest in recent years, with several different
approaches proposed in the literature. In general, these methods take advantage of
the exponentially growing volume of the hyperbolic space as a function of the radius
from the origin, allowing a (roughly) uniform spatial distribution of the nodes even
for scale-free small-world networks, where the connection probability between pairs
decays with hyperbolic distance. One of the motivations behind hyperbolic embedding
is that optimal placement of the nodes in a hyperbolic space is widely thought to
enable efficient navigation on top of the network. According to that, one of the measures
that can be used to quantify the quality of different embeddings is given by the fraction
of successful greedy paths following a simple navigation protocol based on the hyperbolic
coordinates. In the present work, we develop an optimisation scheme for this score
in the native disk representation of the hyperbolic space. This optimisation algorithm
can be either used as an embedding method alone, or it can be applied to improve this
score for embeddings obtained from other methods. According to our tests on synthetic
and real networks, the proposed optimisation can considerably enhance the success
rate of greedy paths in several cases, improving the given embedding from the point
of view of navigability.