Social physics
Recent decades have seen a rise in the use of physics methods to study different societal
phenomena. This development has been due to physicists venturing outside of their …
phenomena. This development has been due to physicists venturing outside of their …
Community detection in networks: A multidisciplinary review
The modern science of networks has made significant advancement in the modeling of
complex real-world systems. One of the most important features in these networks is the …
complex real-world systems. One of the most important features in these networks is the …
Information cascades in complex networks
Abstract Information cascades are important dynamical processes in complex networks. An
information cascade can describe the spreading dynamics of rumour, disease, memes, or …
information cascade can describe the spreading dynamics of rumour, disease, memes, or …
A new link prediction in multiplex networks using topologically biased random walks
Link prediction is a technique to forecast future new or missing relationships between nodes
based on the current network information. However, the link prediction in monoplex …
based on the current network information. However, the link prediction in monoplex …
Progresses and challenges in link prediction
T Zhou - Iscience, 2021 - cell.com
Link prediction is a paradigmatic problem in network science, which aims at estimating the
existence likelihoods of nonobserved links, based on known topology. After a brief …
existence likelihoods of nonobserved links, based on known topology. After a brief …
Impact of centrality measures on the common neighbors in link prediction for multiplex networks
Complex networks are representations of real-world systems that can be better modeled as
multiplex networks, where the same nodes develop multi-type connections. One of the …
multiplex networks, where the same nodes develop multi-type connections. One of the …
A roadmap towards predicting species interaction networks (across space and time)
Networks of species interactions underpin numerous ecosystem processes, but
comprehensively sampling these interactions is difficult. Interactions intrinsically vary across …
comprehensively sampling these interactions is difficult. Interactions intrinsically vary across …
TIFIM: A two-stage iterative framework for influence maximization in social networks
Influence Maximization is an important problem in social networks, and its main goal is to
select some most influential initial nodes (ie, seed nodes) to obtain the maximal influence …
select some most influential initial nodes (ie, seed nodes) to obtain the maximal influence …
Quantifying the spatial homogeneity of urban road networks via graph neural networks
Quantifying the topological similarities of different parts of urban road networks enables us to
understand urban growth patterns. Although conventional statistics provide useful …
understand urban growth patterns. Although conventional statistics provide useful …
Link prediction in multiplex networks based on interlayer similarity
Some networked systems can be better modeled by multilayer structure where the individual
nodes develop relationships in multiple layers. Multilayer networks with similar nodes across …
nodes develop relationships in multiple layers. Multilayer networks with similar nodes across …