Stream Graphs and Link Streams for the Modeling of Interactions over Time
October 11, 2017 Β· Declared Dead Β· π Social Network Analysis and Mining
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Authors
Matthieu Latapy, Tiphaine Viard, ClΓ©mence Magnien
arXiv ID
1710.04073
Category
cs.SI: Social & Info Networks
Cross-listed
cs.DM,
cs.DS,
physics.data-an,
stat.ML
Citations
207
Venue
Social Network Analysis and Mining
Last Checked
2 months ago
Abstract
Graph theory provides a language for studying the structure of relations, and it is often used to study interactions over time too. However, it poorly captures the both temporal and structural nature of interactions, that calls for a dedicated formalism. In this paper, we generalize graph concepts in order to cope with both aspects in a consistent way. We start with elementary concepts like density, clusters, or paths, and derive from them more advanced concepts like cliques, degrees, clustering coefficients, or connected components. We obtain a language to directly deal with interactions over time, similar to the language provided by graphs to deal with relations. This formalism is self-consistent: usual relations between different concepts are preserved. It is also consistent with graph theory: graph concepts are special cases of the ones we introduce. This makes it easy to generalize higher-level objects such as quotient graphs, line graphs, k-cores, and centralities. This paper also considers discrete versus continuous time assumptions, instantaneous links, and extensions to more complex cases.
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