2016 17th IEEE International Conference on Mobile Data Management (MDM) 2016
DOI: 10.1109/mdm.2016.88
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Evolving Centralities in Temporal Graphs: A Twitter Network Analysis

Abstract: In online social media systems users are not only posting, consuming, and sharing content, but also creating new and destroying existing connections in the underlying social network. This behavior lead us to investigate how user structural position reacts with the evolution of the underlying social network structure. While centrality metrics have been studied in the past, much less is known about their temporal behaviors and processing, mainly when analyzing not just networks snapshots, but interval graphs. He… Show more

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Cited by 23 publications
(32 citation statements)
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“…Another variation is to define temporal networks with edges that are not active over a set of times but rather over a set of intervals e = (u, v, t init , t end ). These are the interval graphs (Holme & Saramaki, 2012), good for modeling follow/unfollow relationships in Twitter network (Pereira, Amo, & Gama, 2016) or infrastructural systems like the Internet. In fact, interval graphs can be transformed into contact sequence graphs and most of the network analysis techniques hold in both cases.…”
Section: Temporal Networkmentioning
confidence: 99%
“…Another variation is to define temporal networks with edges that are not active over a set of times but rather over a set of intervals e = (u, v, t init , t end ). These are the interval graphs (Holme & Saramaki, 2012), good for modeling follow/unfollow relationships in Twitter network (Pereira, Amo, & Gama, 2016) or infrastructural systems like the Internet. In fact, interval graphs can be transformed into contact sequence graphs and most of the network analysis techniques hold in both cases.…”
Section: Temporal Networkmentioning
confidence: 99%
“…The literature based on temporal networks (Holme and Saramaki 2012), focused on social media (Holme 2014), is essentially concentrated on understanding patterns of information diffusion by identifying key mediators and how temporal and topological structure of inter-action affects spreading processes. The research in Pereira et al (2016a); Wu et al (2014) discusses the various concepts of shortest path for temporal graphs and proposes efficient algorithms to compute them. In Nicosia et al (2013) graph metrics are revisited for temporal networks in order to take into account the effects of time ordering on causality.…”
Section: Temporal Social Networkmentioning
confidence: 99%
“…We explore two different representations of social networks: as a static network and as a temporal network (Holme and Saramaki 2012;Pereira et al 2016a). The static network structure is a traditional approach where temporal aspects are negligible and its evolution is analyzed just as a set of graphs snapshots over time (Pereira et al 2016a). On the other hand, in temporal networks the information of when interactions between nodes happen is taken into account.…”
Section: Temporal Network Versus Static Networkmentioning
confidence: 99%
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